People detection in video and image data

Image analysis – Learning systems – Trainable classifiers or pattern recognizers

Reexamination Certificate

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C382S224000, C382S103000, C348S143000

Reexamination Certificate

active

07986828

ABSTRACT:
A process identifies a person in image data. The process first executes a training phase, and thereafter a detection phase. The training phase learns body parts using body part detectors, generates classifiers, and determines a spatial distribution and a set of probabilities. The execution phase applies the body part detector to an image, combines output of several body part detectors, and determines maxima of the combination of the output.

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