This is a extension of FIND, the Framework for Internal Navigation and Discovery, which is based on the idea of Lucius Fox's sonar system in The Dark Knight that is used to track cellphones.
The system uses a network of Raspberry Pis which sniff the WiFi probe requests from WiFi-enabled devices and sends these parcels to a central server which compiles and forwards the fingerprint to the FIND server which then uses machine learning to classify the location based on the unique WiFi fingerprints.
This system does not require being logged into a particular WiFi - it will track any phone/device with WiFi enabled! (Caveat: for iOS devices it will only track if Wi-Fi is associated with a network - any network, though - because of MAC spoofing it uses for security). This system also does not require installing any apps on a phone. Tracking occurs anytime a WiFi chip makes a probe request (which is every minute or so). For this to work, it requires a one-time setup to populate the system with known fingerprints of known locations before it can pinpoint locations (see #3 below).
Note: It may be illegal to monitor networks for MAC addresses, especially on networks that you do not own. Please check your country's laws (for US Section 18 U.S. Code § 2511) - discussion.
You can setup Raspberry Pis around a house in a way that they will see different signal strengths from various WiFi devices. Each WiFi-enabled device see requests from the various Raspberry Pis with different strengths (see colored bars in Figure below). These graphs are a fingerprint which can be used to uniquely classify the location.
The Raspberry Pi cluster gets probe requests to various WiFi devices, and compiles these and forwards them to a FIND-LF server. This FIND-LF server then sends a compiled fingerprint to a main server. This system uses WiFi probe requests, which occur on any WiFi enabled device, as long as WiFi is enabled. These probe requests generally occur when a scan takes place, which is every few minutes when the phone is being used.
Once sent to the FIND server, the location can be directly determined. For more information about this, see the FIND README.
You will need a Raspberry Pi. Ones with built-in Wifi work best:
You will need a monitor-mode enabled wifi USB adapter. There are a number of possible USB WiFi adapters that support monitor mode. Here's a list that are popular:
- USB Rt3070 $14
- Panda PAU5 $14
- Panda PAU6 $15
- Panda PAU9 $36
- Alfa AWUSO36NH $33
- Alfa AWUS036NHA $40
- Alfa AWUS036NEH $40
- Sabrent NT-WGHU $15 (b/g) only
Namely you want to find a USB adapter with one of the following chipsets: Atheros AR9271, Ralink RT3070, Ralink RT3572, or Ralink RT5572.
Install Raspbian lite onto a Pi. If you don't use the pi
user, make sure to give the user sudo acess. Then initialize the Raspberry Pi with the following script
sudo sh -c "$(curl -fsSL https://raw.githubusercontent.com/schollz/find-lf/master/node/initialize.sh)"
Alternatively, you can do this using my script for PiBakery.
Also edit /etc/network/interfaces
and remove the wpa-conf
line for wlan1
.
Do this for several Pis and then plug in the WiFi adapter that has "monitor" mode.
First make sure you have SSH installed and nmap.
sudo apt-get install openssh-client openssh-server nmap
Its useful to add your SSH key to each Pi, which you can do just using:
ssh-keygen # do this once
cat ~/.ssh/id_rsa.pub | ssh pi@1YOURADDRESS \
"mkdir -p ~/.ssh && cat >> ~/.ssh/authorized_keys" # do for every Pi
Then download cluster.py
for accessing the cluster
wget https://raw.githubusercontent.com/schollz/find-lf/master/tools/cluster.py
Then, to initialize, just run
python3 cluster.py initialize
to which you'll be asked for the information about your cluster. Choose any group
that you want, but remember it, as you will need it to login to the FIND server. For the lf address
, you can use the default (a public server) or set it to your own. See find-lf/server/README.md
for more information.
To easily find which hostnames/IPs are on your network, use
python3 cluster.py list
Startup the Pi cluster using python3.py cluster start
. You can check the status with python3 cluster.py status
After the cluster is up in running, you need to do learning. Take a smart phone and identify its mac address, something like AA:BB:CC:DD:EE:FF
. Take your phone to a location. Then activate the find-lf server to do learning either by switching on the find-lf website or running python3 cluster.py -u AA:BB:CC:DD:EE:FF -l location learn
.
This is important! Before moving to a new location, make sure to turn off learning by switching to tracking. Activate this on the find-lf server using the the find-lf website or use python3 cluster.py track
.
Repeat these steps for as many locations as you want.
Now just go to https://ml.internalpositioning.com and login using your group name to see tracking of all the phones!
You can also track a single phone using https://ml.internalpositioning.com/GROUP/dashboard?user=AA:BB:CC:DD:EE:FF.
Copyright 2015-2017 Zack Scholl (zack@hypercubeplatforms.com, @zack_118). All rights reserved. Use of this source code is governed by a AGPL license that can be found in the LICENSE file.
- Determine the wlan0/1 of the Wi-Fi adapter automatically (currently it defaults to wlan1, which is right most of the time)