EagleEye - Stalk your Friends

  •        15

This only works if their Facebook Profile is public. You have at least one image of the person you are looking for and a clue about their name. You enter this data into EagleEye and it tries to find Instagram, Youtube, Facebook, and Twitter Profiles of this person.

https://github.com/ThoughtfulDev/EagleEye

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