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Vision based method for object classification and multiple human activity recognition in video survelliance system

Published:03 September 2012Publication History

ABSTRACT

In this paper we present an algorithm for real-time object classification and human activity recognition which can help to made intelligent video surveillance systems for human behavior analysis. The proposed method makes use of object silhouettes to classify objects and activity of humans present in a scene monitored by a dynamic camera. An statical background subtraction method is used for object segmentation. The matching templates are constructed using the motion history images for classify objects into classes like human, human group and vehicle; and object shape information for different human activities in a video. Experimental results demonstrate that the proposed method can recognize these activities accurately.

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  1. Vision based method for object classification and multiple human activity recognition in video survelliance system

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      cover image ACM Other conferences
      CUBE '12: Proceedings of the CUBE International Information Technology Conference
      September 2012
      879 pages
      ISBN:9781450311854
      DOI:10.1145/2381716

      Copyright © 2012 ACM

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      Publication History

      • Published: 3 September 2012

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