Intelligent Monitoring of Key Sections in Public Transportation

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Abstract:

Behavior analysis is the advanced stage in intelligence surveillance. In this paper, we first parameterize the scene knowledge using Hough Transform and Polynomial fitting to boundary of road. The algorithm of Self-Adaptive Background Subtraction was cited in order to segment the moving objects; the features of improved Hu moment were used for classification; and the cordon was cited to realize the behavior analysis of moving objects. The experimental results show that our algorithm is effective.

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353-358

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December 2014

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© 2015 Trans Tech Publications Ltd. All Rights Reserved

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