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Action classification of 3D human models using dynamic ANNs for mobile robot surveillance

Theodoros Theodoridis, Huosheng Hu

发表年份
2007
引用次数
27

摘要

This paper presents an alternative approach on physical human action classification implemented by mobile robots. In contrast with other action recognition methods, this research indicates the best configuration topology of a number of dynamic neural networks to be used in 31) time series classification by showing several comparison performances. In this action recognition investigation we demonstrate high level network granularity on dynamic classification and class discrimination of normal and aggressive action recognition. An interconnection between an ubiquitous 31) sensory tracker system and a mobile robot is set to create a perception to action architecture capable to perceive, process, and classify physical human actions. The robot is used as a process-to-action unit to process the 31) data taken by the tracker and to eventually generate surveillance assessment reports pointing towards action-class matchings as well as generating evaluation statistics which signify the quality of the actions recognized.

关键词

Computer scienceMobile robotArtificial intelligenceProcess (computing)Action (physics)RobotClass (philosophy)Artificial neural networkMachine learningPerception

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