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Journal of System Simulation

Abstract

Abstract: To address the issues of large feature space, numerous model parameters and slow training speed in coordinated operation action recognition, a coordinated operational action recognition method based on a deep spatio-temporal recurrent neural network is proposed. In this method, a warped region generation mechanism is introduced to divide the whole battlefield into sub-battlefield. Meanwhile, a hierarchical recurrent neural network is constructed using spatio-temporal graph model, which is applied to the generated sub-battlefield to recognize coordinated operational action. Additionally, the recognized coordinated operational actions of sub-battlefields are merged to find out all coordinated operational actions based on the principle of transitivity of coordinated operational actions in local battlefield. Experiment results suggest that the proposed method possesses higher accuracy.

First Page

793

Last Page

800

CLC

TP183;E919

Recommended Citation

Yi Zhuo, Liao Ying, Hu Xiaofeng, Du Xuehui, Zhu Feng. A deep spatio-temporal RNNs based coordinated operational action recognition[J]. Journal of System Simulation, 2018, 30(3): 793-800.

DOI

10.16182/j.issn1004731x.joss.201803004

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