Paper
10 February 2023 Target detecting deep neural network countermeasure technology for space-based remote sensing and its application to mobile radar
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Proceedings Volume 12552, International Conference on Geographic Information and Remote Sensing Technology (GIRST 2022); 125522D (2023) https://doi.org/10.1117/12.2667710
Event: International Conference on Geographic Information and Remote Sensing Technology (GIRST 2022), 2022, Kunming, China
Abstract
Space-based remote sensing is an important way of detecting many types of land targets. For the purpose of taking cover, land targets have a strong demand for avoiding space-based remote sensing reconnaissance. In practice, space-based reconnaissance will produce huge data, which are unbearable for human-beings. Therefore, the data processing must rely on artificial intelligence technology such as deep neural network. Many previous works show that the existing intelligent target detection algorithm based on deep neural network will be affected by perturbations. Firstly, this paper establishes a target detection method based on the Faster RCNN framework, and then three types of disturbances methods are studied to help the mobile radar to counter the typical space-based artificial intelligence detection algorithm. The simulation results show that the three types of disturbances methods can fool the typical target detection technology based on deep neural network.
© (2023) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Yan Ouyang, Peiqi Deng, Binbin Shi, and Ting Gao "Target detecting deep neural network countermeasure technology for space-based remote sensing and its application to mobile radar", Proc. SPIE 12552, International Conference on Geographic Information and Remote Sensing Technology (GIRST 2022), 125522D (10 February 2023); https://doi.org/10.1117/12.2667710
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KEYWORDS
Object detection

Target detection

Radar sensor technology

Reconnaissance

Detection and tracking algorithms

Education and training

Evolutionary algorithms

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