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  • 姜海洋,卢庆林,牛 超,等.基于分离卷积的战场目标聚集行为识别[J].电讯技术,2020,(3): - .    [点击复制]
  • JIANG Haiyang,LU Qinglin,NIU Chao,et al.Battlefield target aggregation behavior recognition based on separation convolution[J].,2020,(3): - .   [点击复制]
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基于分离卷积的战场目标聚集行为识别
姜海洋,卢庆林,牛超,秦蓁,李艾静,杨海涛
0
(航天工程大学 研究生院,北京 101416;解放军32090部队,河北 秦皇岛 066000;陆军工程大学 通信工程学院,南京 210014;航天工程大学 航天信息学院,北京 101416)
摘要:
针对大部分行为识别算法效率较低,难以应对大规模影像识别任务的问题,一方面,提出一种结合双流结构与多纤维网络的双流多纤维网络模型,分别以RGB序列、光流序列为输入提取视频的时空信息,然后将两条支路网络的识别结果进行决策相加,提高了对战场目标聚集行为的检测效率与识别准确率;另一方面,提出一种结合分离卷积思想与多纤维网络的双流分离卷积多纤维网络模型,进一步提高网络检测效率与抗过拟合能力。实验表明,在建立的情报影像仿真数据集中,上述算法能够有效识别出战场目标聚集行为,在大幅提升检测效率同时实现了识别准确率的提升。
关键词:  战场目标  聚集行为  行为识别  深度学习  卷积神经网络
DOI:
基金项目:国家自然科学基金资助项目(61702545)
Battlefield target aggregation behavior recognition based on separation convolution
JIANG Haiyang,LU Qinglin,NIU Chao,QIN Zhen,LI Aijing,YANG Haitao
(Department of Graduate Management,Space Engineering University,Beijing 101416,China;Unit 32090 of PLA,Qinghuangdao 066000,China;College of Communications Engineering,The Army Engineering University,Nanjing 210014,China;College of Aerospace Information,Space Engineering University,Beijing 101416,China)
Abstract:
Due to low efficiency,it is difficult for most behavior recognition algorithms to cope with the identification of large-scale videos.On the one hand,the two-stream multi-fiber network model is proposed by combining two-stream structure and multi-fiber network.It takes the stacked RGB frames and the sequential optical flow images as input to extract spatio-temporal information of video.The results of RGB network and optical flow network are combined with fusion.The two-stream multi-fiber network model improves the detection efficiency and recognition accuracy of battlefield target aggregation behavior.On the other hand,by combining the idea of separation convolution with the multi-fiber module,two-stream separate convolution multi-fiber network model is proposed to further improve the detection efficiency and reduce overfitting.The experiment shows that in the intelligence videos simulation datasets,the above algorithms can effectively identify the battlefield target aggregation behavior and greatly improve the detection efficiency and recognition accuracy.
Key words:  battlefield target  aggregation behavior  behavior recognition  deep learning  convolutional neural network
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