基于生成网络的图像冗余模式去除技术

K. Uehira, H. Unno
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引用次数: 0

摘要

研究了一种利用生成网络从捕获的图像中去除不必要图案的技术。当为了获取深度图而捕获图像时,由线和空间组成的图案被叠加到RGB彩色图像的蓝色分量图像上。在获取深度图之后,叠加图案变得不必要。我们试图通过使用生成对抗性网络(GAN)和自动编码器(AE)来去除这些不必要的模式。实验结果表明,使用GAN和AE可以将图案去除到不可见的程度。他们还表明,GAN的性能远高于AE,其PSNR和SSIM分别超过45和约0.99。从结果中,我们用GAN证明了该技术的有效性。
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Technique for Removing Unnecessary Superimposed Patterns from Image using Generative Network
A technique for removing unnecessary patterns from captured images by using a generative network is studied. The patterns, composed of lines and spaces, are superimposed onto a blue component image of RGB color image when the image is captured for the purpose of acquiring a depth map. The superimposed patterns become unnecessary after the depth map is acquired. We tried to remove these unnecessary patterns by using a generative adversarial network (GAN) and an auto encoder (AE). The experimental results show that the patterns can be removed by using a GAN and AE to the point of being invisible. They also show that the performance of GAN is much higher than that of AE and that its PSNR and SSIM were over 45 and about 0.99, respectively. From the results, we demonstrate the effectiveness of the technique with a GAN.
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