A symbolic framework for recognizing activities in full motion surveillance videos

Document Type

Conference Proceeding

Publication Date

2-9-2017

Abstract

We present a symbolic framework for recognizing activities of interest in real time from video streams automatically. This framework uses regular expressions to symbolically represent (possibly infinite) sets of motion characteristics obtained from a video. It uniformly handles both trajectory-based and periodic articulated activities and provides polynomial time graph algorithms for fast recognition. The regular expressions representing motion characteristics can either be provided manually or learnt automatically from positive and negative examples of strings (that describe dynamic behavior) using offline automata learning frameworks. Confidence measures are associated with recognition using Levenshtein distance between a string representing a motion signature and the regular expression describing an activity. We have used our framework to recognize trajectory-based activities like vehicle turns (U-turns, left and right turns, and K-turns), vehicle start and stop, a person running and walking, and periodic articulated activities like hand waving, boxing, hand clapping and digging in videos from the VIRAT public dataset, the KTH dataset, and a set of videos obtained from YouTube. Our framework is fast (it runs at nearly 3 times real time) and on the KTH dataset, it is shown to outperform three of the latest existing approaches.

Publication Source (Journal or Book title)

2016 IEEE Symposium Series on Computational Intelligence Ssci 2016

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