Recognizing and tracking clasping and occluded hands

Image Processing(2013)

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摘要
We present a purely algorithmic method for distinguishing when two hands are visually merged together and tracking their positions by propagating tracking information from anchor frames in single-camera video without depth information. We demonstrate and evaluate on a manually labeled dataset selected primarily for clasped hands with 698 images of a single speaker with 1301 annotated left and right hands. Toward the goal of recognizing clasping hands, our method performs better than baseline on recall (0.66 vs. 0.53) without sacrificing precision (0.65 for both). We also evaluate its tracking efficacy through its ability to affect performance of a naive hand labeling heuristic, resulting in an improvement over the baseline (F-score of 0.59 vs. 0.48 baseline).
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关键词
palmprint recognition,target tracking,video signal processing,clasping hands,hand recognition,hand tracking,manually labeled dataset,occluded hands,purely algorithmic method,tracking information,Tracking,gestures,hands,optical flow
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