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preroll music
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Herald: Our next speaker for today is a
computer science PhD student at UC Santa
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Barbara. He is a member of the Shellfish
Hacking Team and he's also the organizer
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of the IECTF Hacking Competition. Please
give a big round of applause to Nilo
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Redini.
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applause
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Nilo: Thanks for the introduction, hello
to everyone. My name is Nilo, and today
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I'm going to present you my work Koronte:
identifying multi-binary vulnerabilities
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in embedded firmware at scale. This work
is a co-joint effort between me and
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several of my colleagues at University of
Santa Barbara and ASU. This talk is going
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to be about IoT devices. So before
starting, let's see an overview about IoT
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devices. IoT devices are everywhere. As
the research suggests, they will reach the
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20 billion units by the end of the next
year. And a recent study conducted this
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year in 2019 on 16 million households
showed that more than 70 percent of homes
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in North America already have an IoT
network connected device. IoT devices make
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everyday life smarter. You can literally
say "Alexa, I'm cold" and Alexa will
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interact with the thermostat and increase
the temperature of your room. Usually the
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way we interact with the IoT devices is
through our smartphone. We send a request
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to the local network, to some device,
router or door lock, or we might send the
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same request through a cloud endpoint,
which is usually managed by the vendor of
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the IoT device. Another way is through the
IoT hubs, smartphone will send the request
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to some IoT hub, which in turn will send
the request to some other IoT devices. As
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you can imagine, IoT devices use and
collect our data and some data is more
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sensitive than other. For instance, think
of all the data that is collected by my
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lightbulb or data that is collected by our
security camera. As such, IoT devices can
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compromise people's safety and privacy.
Things, for example, about the security
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implication of a faulty smartlock or the
brakes of your smart car. So the question
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that we asked is: Are IoT devices secure?
Well, like everything else, they are not.
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OK, in 2016 the Mirai botnet compromised
and leveraged millions of IoT devices to
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disrupt core Internet services such as
Twitter, GitHub and Netflix. And in 2018,
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154 vulnerabilities affecting IoT devices
were published, which represented an
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increment of 15% compared to 2017 and an
increase of 115% compared to 2016. So then
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we wonder: So why is it hard to secure IoT
devices? To answer this question we have
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to look up how IoT devices work and they
are made. Usually when you remove all the
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plastic and peripherals IoT devices look
like this. A board with some chips laying
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on it. Usually you can find the big chip,
the microcontroller which runs the
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firmware and one or more peripheral
controllers which interact with external
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peripherals such as the motor of, your
smart lock or cameras. Though the design
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is generic, implementations are very
diverse. For instance, firmware may run on
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several different architectures such as
ARM, MIPS, x86, PowerPC and so forth. And
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sometimes they are even proprietary, which
means that if a security analyst wants to
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understand what's going on in the
firmware, he'll have a hard time if he
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doesn't have the vendor specifics. Also,
they're operating in environments with
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limited resources, which means that they
run small and optimized code. For
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instance, vendors might implement their
own version of some known algorithm in an
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optimized way. Also, IoT devices manage
external peripherals that often use custom
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code. Again, with peripherals we mean like
cameras, sensors and so forth. The
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firmware of IoT devices can be either
Linux based or a blob firmware, Linux
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based are by far the most common. A study
showed that 86% of firmware are based on
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Linux and on the other hand, blobs
firmware are usually operating systems and
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user applications packaged in a single
binary. In any case, firmware samples are
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usually made of multiple components. For
instance, let's say that you have your
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smart phone and you send a request to your
IoT device. This request will be received
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by a binary which we term as body binary,
which in this example is an webserver. The
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request will be received, parsed, and then
it might be sent to another binary code,
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the handler binary, which will take the
request, work on it, produce an answer,
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send it back to the webserver, which in
turn would produce a response to send to
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the smartphone. So to come back to the
question why is it hard to secure IoT
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devices? Well, the answer is because IoT
devices are in practice very diverse. Of
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course, there have been various work that
have been proposed to analyze and secure
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firmware for IoT devices. Some of them
using static analysis. Others using
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dynamic analysis and several others using
a combination of both. Here I wrote
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several of them. Again at the end of the
presentation there is a bibliography with
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the title of these works. Of course, all
these approaches have some problems. For
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instance, the current dynamic analysis are
hard to apply to scale because of the
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customized environments that IoT devices
work on. Usually when you try to
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dynamically execute a firmware, it's gonna
check if the peripherals are connected and
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are working properly. In a case where you
can't have the peripherals, it's gonna be
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hard to actually run the firmware. Also
current static analysis approaches are
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based on what we call the single binary
approach, which means that binaries from a
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firmware are taken individually and
analysed. This approach might produce many
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false positives. For instance, so let's
say again that we have our two binaries.
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This is actually an example that we found
on one firmware, so the web server will
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take the user request, will parse the
request and produce some data, will set
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this data to an environment variable and
eventually will execute the handle binary.
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Now, if you see the parsing function
contains a string compare which checks if
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some keyword is present in the request.
And if so, it just returns the whole
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request. Otherwise, it will constrain the
size of the request to 128 bytes and
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return it. The handler binary in turn when
spawned will receive the data by doing a
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getenv on the query string, but also will
getenv on another environment variable
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which in this case is not user controlled
and they user cannot influence the content
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of this variable. Then it's gonna call
function process_request. This function
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eventually will do two string copies. One
from the user data, the other one from the
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log path on two different local variables
that are 128 bytes long. Now in the first
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case, as we have seen before, the data can
be greater than 128 bytes and this string
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copy may result in a bug. While in the
second case it will not. Because here we
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assume that the system handles its own
data in a good manner. So throughout this
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work, we're gonna call the first type of
binary, the setter binary, which means
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that it is the binary that takes the data
and set the data for another binary to be
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consumed. And the second type of binary we
called them the getter binary. So the
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current bug finding tools are inadequate
because other bugs are left undiscovered
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if the analysis only consider those
binaries that received network requests or
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they're likely to produce many false
positives if the analysis considers all of
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them individually. So then we wonder how
these different components actually
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communicate. They communicate through what
are called interprocess communication,
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which basically it's a finite set of
paradigms used by binaries to communicate
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such as files, environment variables, MMIO
and so forth. All these pieces are
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represented by data keys, which are file
names, or in the case of the example
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before here on the right, it's the query
string environment variable. Each binary
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that relies on some shared data must know
the endpoint where such data will be
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available, for instance, again, like a
file name or like even a socket endpoint
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or the environment variable. This means
that usually, data keys are coded in the
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program itself, as we saw before. To find
bugs in firmware, in a precise manner, we
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need to track how user data is introduced
and propagated across the different
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binaries. Okay, let's talk about our work.
Before you start talking about Karonte, we
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define our threat model. We hypotesized
that attacker sends arbitrary requests
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over the network, both LAN and WAN
directly to the IoT device. Though we said
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before that sometimes IoT device can
communicate through the clouds, research
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showed that some form of local
communication is usually available, for
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instance, during the setup phase of the
device. Karonte is defined as a static
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analysis tool that tracks data flow across
multiple binaries, to find
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vulnerabilities. Let's see how it works.
So the first step, Karonte find those
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binaries that introduce the user input
into the firmware. We call these border
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binaries, which are the binaries, that
basically interface the device to the
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outside world. Which in the example is our
web server. Then it tracks how a data is
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shared with other binaries within the
firmware sample. Which we'll understand in
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this example, the web server communicates
with the handle binary, and builds what we
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call the BDG. BDG which stands for binary
dependency graph. It's basically a graph
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representation of the data dependencies
among different binaries. Then we detect
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vulnerabilities that arise from the misuse
of the data using the BDG. This is an
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overview of our system. We start by taking
a packed firmware, we unpack it. We find
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the border binaries. Then we build the
binary dependency graph, which relies on a
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set of CPFs, as we will see soon. CPF
stands for Communication Paradigm Finder.
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Then we find the specifics of the
communication, for instance, like the
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constraints applied to the data that is
shared through our module multi-binary
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data-flow analysis. Eventually we run our
insecure interaction detection module,
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which basically takes all the information
and produces alerts. Our system is
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completely static and relies on our static
taint engine. So let's see each one of
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these steps, more in details. The
unpacking procedure is pretty easy, we use
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the off-the-shelf firmware unpacking tool
binwalk. And then we have to find the
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border binaries. Now we see that border
binaries basically are binaries that
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receive data from the network. And we
hypotesize that will contain parsers to
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validate the data that they received. So
in order to find them, we have to find
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parsers which accept data from network and
parse this data. To find parsers we rely
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on related work, which basically uses a
few metrics and define through a number
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the likelihood for a function to contain
parsing capabilities. These metrics that
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we used are number of basic blocks, number
of memory comparison operations and number
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of branches. Now while these define
parsers, we also have to find if a binary
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takes data from the network. As such, we
define two more metrics. The first one, we
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check if binary contains any network
related keywords as SOAP, http and so
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forth. And then we check if there exists a
data flow between read from socket and a
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memory comparison operation. Once for each
function, we got all these metrics, we
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compute what is called a parsing score,
which basically is just a sum of products.
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Once we got a parsing score for each
function in a binary, we represent the
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binary with its highest parsing score.
Once we got that for each binary in the
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firmware we cluster them using the DBSCAN
density based algorithm and consider the
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cluster with the highest parsing score as
containing the set of border binaries.
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After this, we build the binary dependency
graph. Again the binary dependency graph
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represents the data dependency among the
binaries in a firmware sample. For
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instance, this simple graph will tell us
that a binary A communicates with binary C
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using files and the same binary A
communicates with another binary B using
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environment variables. Let's see how this
works. So we start from the identified
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border binaries and then we taint the data
compared against network related keywords
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that we found and run a static analysis,
static taint analysis to detect whether
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the binary relies on any IPC paradigm to
share the data. If we find that it does,
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we establish if the binary is a setter or
a getter, which again means that if the
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binary is setting the data to be consumed
by another binary, or if the binary
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actually gets the data and consumes it.
Then we retrieve the employed data key
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which in the example before was the
keyword QUERY_STRING. And finally we scan
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the firmware sample to find other binaries
that may rely on the same data keys and
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schedule them for further analysis. To
understand whether a binary relies on any
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IPC, we use what we call CPFs, which again
means communication paradigm finder. We
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design a CPF for each IPC. And the CPFs
are also used to find the same data keys
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within the firmware sample. We also
provide Karonte with a generic CPF to
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cover those cases where the IPC is
unknown. Or those cases were the vendor
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implemented their own versions of some
IPC. So for example they don't use the
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setenv. But they implemented their own
setenv. The idea behind this generic CPF
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that we call the semantic CPF is that data
keys has to be used as index to set, or to
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get some data in this simple example. So
let's see how the BDG algorithm works. We
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start from the body binary, which again
will start from the server request and
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will pass the URI and we see that here. it
runs a string comparison against some
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network related keyword. As such, we taint
the variable P. And we see that the
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variable P is returned from the function
to these two different points. As such, we
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continue. And now we see that data gets
tainted and the variable data, it's passed
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to the function setenv. At this point, the
environment CPF will understand that
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tainted data is passed, is set to an
environment variable and will understand
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that this binary is indeed the setter
binary that uses the environment. Then we
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retrieve the data key QUERY_STRING and
we'll search within the firmware sample
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all the other binaries that rely on the
same data key. And it will find that this
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binary relies on the same data key and
will schedule this for further analysis.
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After this algorithm we build the BDG by
creating edges between setters and getters
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for each data key. The multi binary data
flow analysis uses the BDG to find and
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propagate the data constraints from a
setter to a getter. Now, through this we
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apply only the least three constraints,
which means that ideally between two
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program points, there might be an infinite
number of parts and ideally in theory an
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infinite amount of constraints that we can
propagate to the setter binary to the
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getter binary. But since our goal here is
to find bugs, we only propagate the least
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strict set of constraints. Let's see an
example. So again, we have our two
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binaries and we see that the variable that
is passed to the setenv function is data,
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which comes from two different parts from
the parse URI function. In the first case,
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the data that its passed is unconstrained
one in the second case, a line 8 is
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constrained to be at most 128 bytes. As
such, we only propagate the constraints of
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the first guy. In turn, the getter binary
will retrieve this variable from the
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environment and set the variable query.
Oh, sorry. Which in this case will be
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unconstrained. Insecure interaction
detection run a static taint analysis and
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check whether tainted data can reach a
sink in an unsafe way. We consider as
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sinks memcpy like functions which are
functions that implement semantically
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equivalent memcyp, strcpy and so forth. We
raise alert if we see that there is a
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dereference of a tainted variable and if
we see there are comparisons of tainted
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variables in loop conditions to detect
possible DoS vulnerabilities. Let's see an
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example again. So we got here. We know
that our query variable is tainted and
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it's unconstrained. And then we follow the
taint in the function process_request,
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which we see will eventually copy the data
from q to arg. Now we see that arg is 128
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bytes long while q is unconstrained and
therefore we generate an alert here. Our
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static taint engine is based on BootStomp
and is completely based on symbolic
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execution, which means that the taint is
propagated following the program data
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flow. Let's see an example. So assuming
that we have this code, the first
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instruction takes the result from some
seed function that might return for
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instance, some user input. And in a
symbolic world, what we do is we create a
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symbolic variable ty and assign to it a
tainted variable that we call TAINT_ty,
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which is the taint target. The next
destruction X takes the value ty plus 5
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and a symbolic word. We just follow the
data flow and x gets assigned TAINT_ty
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plus 5 which effectively taints also X. If
at some point X is overwritten with some
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constant data, the taint is automatically
removed. In its original design,
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BootStomp, the taint is removed also when
data is constrained. For instance, here we
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can see that the variable n is tainted but
then is constrained between two values 0
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and 255. And therefore, the taint is
removed. In our taint engine we have two
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additions. We added a path prioritization
strategy and we add taint dependencies.
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The path prioritization strategy valorizes
paths that propagate the taint and
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deprioritizes those that remove it. For
instance, say again that some user input
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comes from some function and the variable
user input gets tainted. Gets tainted and
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then is passed to another function called
parse. Here, if you see there are possibly
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an infinite number of symbolic parts in
this while. But only 1 will return tainted
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data. While the others won't. So the path
prioritization strategy valorizes this
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path instead of the others. This has been
implemented by finding basic blocks within
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a function that return a nonconstant data.
And if one is found, we follow its return
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before considering the others. Taint
dependencies allows smart untaint
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strategies. Let's see again the example.
So we know that user input here is
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tainted, is then parsed and then we see
that it's length is checked and stored in
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a variable n. Its size is checked and if
it's higher than 512 bytes, the function
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will return. Otherwise it copies the data.
Now in this case, it might happen that if
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this strlen function is not analyzed
because of some static analysis input
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decisions, the taint tag of cmd might be
different from the taint tag of n and in
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this case, though, and gets untainted, cmd
is not untainted and the strcpy can raise,
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sorry, carries a false positive. So to fix
this problem. Basically we create a
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dependency between the taint tag of n and
the taint tag of cmd. And when n gets
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untainted, cmd gets untainted as well. So
we don't have more false positives. This
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procedure is automatic and we find
functions that implement streamlined
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semantically equivalent code and create
taint tag dependencies. OK. Let's see our
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evaluation. We ran 3 different evaluations
on 2 different data sets. The first one
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composed by 53 latest firmware samples
from seven vendors and a second one 899
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firmware gathered from related work. In
the first case, we can see that the total
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number of binaries considered are 8.5k,
few more than that. And our system
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generated 87 alerts of which 51 were found
to be true positive and 34 of them were
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multibinary vulnerabilities, which means
that the vulnerability was found by
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tracking the data flow from the setter to
the getter binary. We also ran a
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comparative evaluation, which basically we
tried to measure the effort that an
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analyst would go through in analyzing
firmware using different strategies. In
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the first one, we consider each and every
binary in the firmware sample
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independently and run the analysis for up
to seven days for each firmware. The
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system generated almost 21000 alerts.
Considering only almost 2.5k binaries. In
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the second case we found the border
binaries, the parsers and we statically
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analyzed only them, and the system
generated 9.3k alerts. Notice that in this
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case, since we don't know how the user
input is introduced, like in this
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experiment, we consider every IPC that we
find in the binary as a possible source of
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user input. And this is true for all of
them. In the third case we ran the BDG but
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we consider each binaries independently.
Which means that we don't propagate
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constraints and we run a static single
corner analysis on each one of them. And
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the system generated almost 15000 alerts.
Finally, we run Karonte and the generated
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alerts were only 74. We also run a larger
scale analysis on 899 firmware samples.
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And we found that almost 40% of them were
multi binary, which means that the network
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functionalities were carried on by more
than one binary. And the system generated
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1000 alerts. Now, there is a lot going on
in this table, like details are on the
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paper. Here in this presentation I just go
through some as I'll motivate. So we found
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that on average, a firmware contains 4
border binaries. A BDG contains 5 binaries
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and some BDG have more than 10 binaries.
Also, we plot some statistics and we found
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that 80% of the firmware were analysed
within a day, as you can see from the top
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left figure. However, experiments
presented a great variance which we found
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was due to implementation details. For
instance we found that angr would take
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more than seven hours to build some CFGs.
And sometimes they were due to a high
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number of data keys. Also, we found that
the number of paths, as you can see from
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this second picture from the top, the
number of paths do not have an impact on
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the total time. And as you can see from
the bottom two pictures, performance not
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heavily affected by firmware size.
Firmware size here we mean the number of
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binaries in a firmware sample and the
total number of basic blocks. So let's see
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how to run Karonte. The procedure is
pretty straightforward. So first you get a
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firmware sample. You create a
configuration file containing information
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of the firmware sample and then you run
it. So let's see how. So this is an
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example of a configuration file. It
contains the information, but most of them
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are optional. The only ones that are not
are this one: Firmware path, that is the
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path to your firmware. And this too, the
architecture of the firmware and the base
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address if the firmware is a blob, is a
firmware blob. All the other fields are
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optional. And you can set them if you have
some information about the firmware. A
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detailed explanation of all of these
fields are on our GitHub repo. Once you
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set the configuration file, you can run
Karonte. Now we provide a Docker
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container, you can find the link on our
GitHub repo. And I'm gonna run it, but
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it's not gonna finish because it's gonna
take several hours. But all you have to do
-
is merely... typing noises just run it
on the configuration file and it's gonna
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do each step that we saw. Eventually I'm
going to stop it because it's going to
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take several hours anyway. Eventually it
will produce a result file that... I ran
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this yesterday so you can see it here.
There is a lot going on here. I'm just
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gonna go through some important like
information. So one thing that you can see
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is that these are the border binaries that
Karonte found. Now, there might be some
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false positives. I'm not sure how many
there are here. But as long as there are
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no false negatives or the number is very
low, it's fine. It's good. In this case,
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wait. Oh, I might have removed something.
All right, here, perfect. In this case,
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this guy httpd is a true positive, which
is the web server that we were talking
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before. Then we have the BDG. In this
case, we can see that Karonte found that
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httpd communicates with two different
binaries, fileaccess.cgi and cgibin. Then
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we have information about the CPFs. For
instance, here we can see that. Sorry. So
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we can see here that httpd has 28 data
keys. And that the semantics CPF found 27
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of them and then there might be one other
here or somewhere that I don't see .
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Anyway. And then we have a list of alerts.
Now, thanks. Now, some of those may be
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duplicates because of loops, so you can go
ahead and inspect all of them manually.
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But I wrote a utility that you can use,
which is basically it's gonna filter out
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all the loops for you. Now to remember how
I called it. This guy? Yeah. And you can
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see that in total it generated, the system
generated 6... 7... 8 alerts. So let's see
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one of them. Oh, and I recently realized
that the path that I'm reporting on the
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log. It's not the path from the setter
binary to the getter binary, to the sink.
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But it's only related to the getter binary
up to the sink. I'm gonna fix this in the
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next days and report the whole paths.
Anyway. So here we can see that the key
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content type contains user input and it's
passed in an unsafe way to the sink
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address at this address. Now. And the
binary in question is called
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fileaccess.cgi. So we can see what happens
there. keyboard noises If you see here,
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we have a string copy that copies the
content of haystack to destination,
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haystack comes basically from this getenv.
And if you see destination comes as
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parameter from this function and return
and these and this by for it's as big as
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0x68 bytes. And this turned out to be
actually a positive. OK. So in summary, we
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presented a strategy to track data flow
across different binaries. We evaluated
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our system on 952 firmware samples and
some takeaways. Analyzing firmware is not
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easy and vulnerabilities persist. We found
out that firmware are made of
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interconnected components and static
analysis can still be used to efficiently
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find vulnerabilities at scale and finding
that communication is key for precision.
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Here's a list of bibliography that I use
throughout the presentation and I'm gonna
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take questions.
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applause
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Herald: So thank you, Nilo, for a very
interesting talk. If you have questions,
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we have three microphones one, two and
three. If you have a question, please go
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head to the microphone and we'll take your
question. Yes. Microphone number two.
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Q: Do you rely on imports from libc or
something like that or do you have some
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issues with like statically linked
binaries, stripped binaries or is it all
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semantic analysis of a function?
Nilo: So. Okay. We use angr. So for
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example, if you have an indirect call, we
use angr to figure out, what's the target?
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And to answer your question like if you
use libc some CPFs do, for instance, then
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environment CPF do any checks, if the
setenv or getenv functions are called. But
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also we use the semantic CPF, which
basically in cases where information are
-
missing like there is no such thing as
libc or some vendors reimplemented their
-
own functions. We use the CPF to actually
try to understand the semantics of the
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function and understand if it's, for
example, a custom setenv.
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Q: Yeah, thanks.
Herald: Microphone number three.
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Q: In embedded environments you often have
also that the getter might work on a DMA,
-
some kind of vendor driver on a DMA. Are
you considering this? And second part of
-
the question, how would you then
distinguish this from your generic IPC?
-
Because I can imagine that they look very
similar in the actual code.
-
Nilo: So if I understand correctly your
question, you mention a case of MMIO where
-
some data is retrieved directly from some
address in memory. So what we found is
-
that these addresses are usually hardcoded
somewhere. So the vendor knows that, for
-
example, from this address A to this
address B if some data is some data from
-
this peripheral. So when we find that some
hardcoded address, like we think that this
-
is like some read from some interesting
data.
-
Q: Okay. And this would be also
distinguishable from your sort of CPF, the
-
generic CPF would be distinguishable...
Nilo: Yeah. Yeah, yeah.
-
Q: ...from a DMA driver by using this
fixed address assuming.
-
Nilo: Yeah. That's what the semantic CPF
does, among the other things.
-
Q: Okay. Thank you.
Nilo: Sure.
-
Herald: Another question for microphone
number 3.
-
Q: What's the license for Karonte?
Nilo: Sorry?
-
Q: I checked the software license, I
checked the git repository and there is no
-
license like at all.
Nilo: That is a very good question. I
-
haven't thought about it yet. I will.
Herald: Any more questions from here or
-
from the Internet? Okay. Then a big round
of applause to Nilo again for your talk.
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