Laser & Optoelectronics Progress, Volume. 56, Issue 7, 071102(2019)

Simulation Learning Method for Discovery of Camouflage Targets Based on Deep Neural Networks

Liu Zhuo1,2, Xiaoqi Chen1,2, Zhenping Xie1,2、*, Xiaojun Jiang3, and Daokun Bi3
Author Affiliations
  • 1 School of Digital Media, Jiangnan University, Wuxi, Jiangsu 214122, China
  • 2 Jiangsu Key Laboratory of Media Design and Software Technology, Wuxi, Jiangsu 214122, China
  • 3 Science and Technology on Near-Surface Detection Laboratory, Wuxi, Jiangsu 214035, China
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    Aim

    ing at the problem of serious lack of effective samples in the automatic discovery of camouflage targets, a simulation training method is proposed based on the sample simulation of a deep neural network and the technical idea of AlphaGo. A simulation synthesis model of camouflage scenes is established. The compound algorithm in the image space, the deep feature extraction strategy of scene images, the measurement strategy of target fusion degree, and the sampling algorithm for graph clustering are designed, respectively. Thus the representative samples for camouflage scene simulation are batch generated, which can be used for the deep neural network training and learning. Moreover, a discovery model of camouflage targets is designed based on a deep residual neural network, in which a multi-scale network training strategy is considered. The experimental results on the simulated samples and real scene images show that the proposed method can be effectively used for the automatic discovery and evaluation of camouflage targets.

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    Liu Zhuo, Xiaoqi Chen, Zhenping Xie, Xiaojun Jiang, Daokun Bi. Simulation Learning Method for Discovery of Camouflage Targets Based on Deep Neural Networks[J]. Laser & Optoelectronics Progress, 2019, 56(7): 071102

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    Paper Information

    Category: Imaging Systems

    Received: Sep. 29, 2018

    Accepted: Oct. 22, 2018

    Published Online: Jul. 30, 2019

    The Author Email: Xie Zhenping (xiezhenping@hotmail.com)

    DOI:10.3788/LOP56.071102

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