Social Mapper is a Social Media Mapping Tool that correlates profiles via facial recognition by Jacob Wilkin(Greenwolf).
Social Mapper is an Open Source Intelligence Tool that uses facial recognition to correlate social media profiles across different sites on a large scale.
It takes an automated approach to search popular social media sites for targets names and pictures to accurately detect and group a person’s presence, outputting the results into a report that a human operator can quickly review.
Social Mapper has a variety of uses in the security industry, for example, the automated gathering of large amounts of social media profiles for use on targeted phishing campaigns.
Facial recognition aids this process by removing false positives in the search results so that reviewing this data is quicker for a human operator.
Social Mapper supports the following social media platforms:
Social Mapper takes a variety of input types such as:
Also Read Mr SIP: SIP-Based Audit and Attack Tool
Social Mapper is primarily aimed at Penetration Testers and Red Teamers, who will use it to expand their target lists and find their social media profiles. From here what you do is only limited by your imagination, but here are a few ideas to get started:
(Note: Social Mapper does not perform these attacks, it gathers you the data you need to perform them on a mass scale.)
These instructions will show you the requirements for and how to use Social Mapper.
As this is a python based tool, it should theoretically run on Linux, ChromeOS (Developer Mode), Mac, and Windows. The main requirements are Firefox, Selenium, and Geckodriver. To install the tool and set it up to follow these 4 steps:
Install the latest version of Mozilla Firefox here:
https://www.mozilla.org/en-GB/firefox/new/
Install the Geckodriver for your operating system and make sure it’s in your path, on Mac you can place it in,/usr/local/bin
on ChromeOS you can place it in,/usr/local/bin
and on Linux, you can place it in /usr/bin
.
Download the latest version of Geckodriver here:
https://github.com/mozilla/geckodriver/releases
Install the required python 2.7 libraries:
git clone https://github.com/SpiderLabs/social_mapper
cd social_mapper/setup
python -m pip install --no-cache-dir -r requirements.txt
Provide Social Mapper with Credentials to log into social media services:
Open social_mapper.py and enter social media credentials into global variables at the top of the file
Social Mapper is run from the command line using a mix of required and optional parameters. You can specify options such as input type and which sites to check alongside a number of other parameters which affect speed and accuracy.
To start up the tool 4 parameters must be provided, an input format, the input file or folder and the basic running mode:
-f, --format : Specify if the -i, --input is a 'name', 'csv', 'imagefolder' or 'socialmapper' resume file
-i, --input : The company name, a csv file, imagefolder or social mapper html file to feed into social mapper
-m, --mode : Fast or Accurate allows you to choose to skip potential targets after a first likely match is found, in some cases potentially speeding up the program x20
Additionally at least one social media site to check must be selected by including one or more of the following:
-a, --all : Selects all of the options below and checks every site that social mapper has credentials for
-fb, --facebook : Check Facebook
-tw, --twitter : Check Twitter
-ig, --instagram : Check Instagram
-li, --linkedin : Check LinkedIn
-gp, --googleplus : Check GooglePlus
-vk, --vkontakte : Check VKontakte
-wb, --weibo : Check Weibo
-db, --douban : Check Douban
Additional optional parameters can also be set to add additional customization to the way social mapper runs:
-t, --threshold : Customises the faceial recognition threshold for matches, this can be seen as the match accuracy. Default is 'standard', but can be set to loose, standard, strict or superstrict. For example loose will find more matches, but some may be incorrect. While strict may find less matches but also contain less false positives in the final report.
-cid, --companyid : Additional parameter to add in a LinkedIn Company ID for if name searches are not picking the correct company.
-s, --showbrowser : Makes the Firefox browser visable so you can see the searches performed. Useful for debugging.
-v, --version : Display current version
Here is a couple of example runs to get started for differing use cases:
A quick run for facebook and twitter on some targets you have in an imagefolder, that you plan to manually review and don't mind some false positives:
python social_mapper.py -f imagefolder -i ./mytargets -m fast -fb -tw
A exhaustive run on a large company where false positives must be kept to a minimum:
python social_mapper.py -f company -i "SpiderLabs" -m accurate -a -t strict
A large run that needs to be split over multiple sessions due to time, the first run doing LinkedIn and Facebook, with the second resuming and filling in Twitter, Google Plus and Instagram:
python social_mapper.py -f company -i "SpiderLabs" -m accurate -li -fb
python social_mapper.py -f socialmapper -i ./SpiderLabs-social-mapper-linkedin-facebook.html -m accurate -tw -gp -ig
Author Credits : SpiderLabs
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