A Monitoring System for Abnormal Water Surface Based on HSI Space

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Abstract:

Classing object is an important step for the high-level visions processing tasks, such as security managing, and abnormality event analysis. In this paper, we address these challenges of abnormal water surface monitoring in real-world unconstrained environments where the background is complex and dynamic. In the algorithm proposed, we extract the moment features of water surface in HSI space, and a technique is developed to monitor the abnormal surface of water based on moment features. Experimental results show that our algorithm works efficiently and robustly.

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994-997

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November 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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