防务技术2024,Vol.33Issue(3) :601-612.DOI:10.1016/j.dt.2023.09.010

MTTSNet:Military time-sensitive targets stealth network via real-time mask generation

Siyu Wang Xiaogang Yang Ruitao Lu Zhengjie Zhu Fangjia Lian Qing-ge Li Jiwei Fan
防务技术2024,Vol.33Issue(3) :601-612.DOI:10.1016/j.dt.2023.09.010

MTTSNet:Military time-sensitive targets stealth network via real-time mask generation

Siyu Wang 1Xiaogang Yang 1Ruitao Lu 1Zhengjie Zhu 1Fangjia Lian 1Qing-ge Li 1Jiwei Fan1
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作者信息

  • 1. PLA Rocket Force University of Engineering,Xi'an 710025,China
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Abstract

The automatic stealth task of military time-sensitive targets plays a crucial role in maintaining national military security and mastering battlefield dynamics in military applications.We propose a novel Mili-tary Time-sensitive Targets Stealth Network via Real-time Mask Generation(MTTSNet).According to our knowledge,this is the first technology to automatically remove military targets in real-time from videos.The critical steps of MTTSNet are as follows:First,we designed a real-time mask generation network based on the encoder-decoder framework,combined with the domain expansion structure,to effectively extract mask images.Specifically,the ASPP structure in the encoder could achieve advanced semantic feature fusion.The decoder stacked high-dimensional information with low-dimensional information to obtain an effective mask layer.Subsequently,the domain expansion module guided the adaptive expansion of mask images.Second,a context adversarial generation network based on gated convolution was constructed to achieve background restoration of mask positions in the original image.In addition,our method worked in an end-to-end manner.A particular semantic segmentation dataset for military time-sensitive targets has been constructed,called the Military Time-sensitive Target Masking Dataset(MTMD).The MTMD dataset experiment successfully demonstrated that this method could create a mask that completely occludes the target and that the target could be hidden in real time using this mask.We demonstrated the concealment performance of our proposed method by comparing it to a number of well-known and highly optimized baselines.

Key words

Deep learning/Military application/Targets stealth network/Mask generation/Generative adversarial network

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基金项目

National Natural Science Foundation of China(62276274)

Shaanxi Natural Science Foundation(2023-JC-YB-528)

Chinese aeronautical establishment(201851U8012)

出版年

2024
防务技术
中国兵工学会

防务技术

CSTPCD
影响因子:0.358
ISSN:2214-9147
参考文献量55
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