Scientific American
The
capture and analysis of surveillance footage has been an indispensable tool for U.S. counterterrorism and law enforcement in the past decade. Video analysis software has improved since the 9/11 terrorist attacks—it can be programmed to identify certain patterns and colors, for example, and to issue
security alerts when these characteristics are detected. But as terrorists and criminals change their tactics to slip through security the surveillance technologies designed to stop or catch them must likewise become more sophisticated.
INTRINSIC BIOMETRICS: Unique movement can be used to identify people, even separating politicians from the comedians imitating them. Image: N.Y.U. Movement Lab
One of the biggest challenges to improving video analytics is programming the software to identify specific people and objects under a variety of conditions, such as poor lighting, cluttered backgrounds and subtle changes in appearance (such as facial hair). Video analytics has a lot of room to improve in these areas with the help of software that sharpens computer vision, enhances facial- and pattern-recognition capabilities, and captures the motion of people and things passing in front of the camera's lens.
[See our earlier coverage of post-9/11 security and surveillance.]
A team of New York University researchers has homed in on motion capture as a particularly promising approach to analysis. Associate computer science professor
Chris Bregler is studying whether potential security threats can be identified via unique patterns of movement. How might someone walk if he was carrying a bomb in his backpack?
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