Article ID Journal Published Year Pages File Type
527791 Image and Vision Computing 2006 18 Pages PDF
Abstract

We present a probabilistic reliable-inference framework to address the issue of rapid detection of human actions with low error rates. The approach determines the shortest video exposures needed for low-latency recognition by sequentially evaluating a series of posterior ratios for different action classes. If a subsequence is deemed unreliable or confusing, additional video frames are incorporated until a reliable classification to a particular action can be made. Results are presented for multiple action classes and subsequence durations, and are compared to alternative probabilistic approaches. The framework provides a means to accurately classify human actions using the least amount of temporal information.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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