A Video Test Sequences Generation Way for Behavior Recognition Based on Cloud Model

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Abstract:

Testing behavior recognition algorithm is a key technology of machine vision, tradition way to generate video test sequences has many defects, and a new way based on cloud model is putted forward. Moving object parameters such as moving types in image sequence were collected; these parameters were inputted into backward cloud generator. The quantitative representation of qualitative concept, expectation Ex,entropy En, super entropy He were gotten. These parameters were used to simulate the moving object behavior representation parameters. Ex, En, He were inputted into normal cloud generator, every moving object was designed as agent, agent can adjust behavior parameters by feeling environment and auto excitation. These behavior parameters were used to evaluate some classics algorithm. The experiment show that: the time cost of new way is 10% of tradition way, and two methods have same effect on testing algorithm recognition rate and algorithm recognition speed, and new way is superior to tradition way on testing algorithm robustness.

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Periodical:

Advanced Materials Research (Volumes 591-593)

Pages:

1276-1280

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Online since:

November 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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