Synthetic Infra-Red Image Dataset Generation by CycleGAN based on SSIM Loss Function

Sky H. Lee, H. Leeghim
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Abstract

Synthetic dynamic infrared image generation from the given virtual environment is being the primary goal to simulate the output of the infra-red(IR) camera installed on a vehicle to evaluate the control algorithm for various search & reconnaissance missions. Due to the difficulty to obtain actual IR data in complex environments, Artificial intelligence(AI) has been used recently in the field of image data generation. In this paper, CycleGAN technique is applied to obtain a more realistic synthetic IR image. We added the Structural Similarity Index Measure(SSIM) loss function to the L1 loss function to generate a more realistic synthetic IR image when the CycleGAN image is generated. From the simulation, it is applicable to the guided-missile flight simulation tests by using the synthetic infrared image generated by the proposed technique.
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基于SSIM损失函数的CycleGAN合成红外图像数据集
从给定的虚拟环境生成合成动态红外图像是模拟安装在车辆上的红外(IR)摄像机输出的主要目标,以评估各种搜索和侦察任务的控制算法。由于在复杂环境下难以获取实际红外数据,人工智能(AI)已被广泛应用于图像数据生成领域。本文将CycleGAN技术应用于获得更真实的合成红外图像。在生成CycleGAN图像时,我们在L1损失函数中加入了结构相似指数度量(SSIM)损失函数,以生成更真实的合成红外图像。仿真结果表明,利用该技术生成的红外合成图像可用于导弹飞行仿真试验。
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