Research on improving the authenticity of simulated infrared image using adversarial networks

Proceedings of SPIE(2019)

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摘要
When the real infrared image is insufficient, the simulation infrared image is an important data supplement to the real infrared image. However, the authenticity of simulated infrared image often does not meet the requirements of real images. So improving the authenticity of simulated infrared image plays an important role in related fields. In order to achieve this goal, a method based on deep learning is proposed in this paper. Unlike traditional methods of using manual modification by experience, the proposed method can convert non-realistic simulation infrared image input into a realistic one with similar scene structure. First, we generate a large number of simulation infrared images through the simulation system. Then, we propose an optimization method to improve the authenticity of simulated infrared image s, and design an end-to-end simulation infrared image optimization model based on generative adversarial network. Finally, we designed a comparison experiment between the original simulation infrared image and the optimized simulation infrared image, and finally verify the effectiveness of our method.
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关键词
Infrared Image Processing,Simulation infrared images,Generative adversarial network,Optimize method
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