基于完全端到端学习的放大感受野的条件边界平衡GAN单幅超高分辨率图像去雾

Sehwan Ki, Hyeonjun Sim, Jae-Seok Choi, Saehun Kim, Munchurl Kim
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引用次数: 21

摘要

接受野被定义为输出图像像素所注视的输入图像空间中的区域。因此,感受野大小影响深度卷积神经网络的学习。特别是在单幅图像去雾问题中,考虑整个输入模糊图像的亮度和颜色,而不需要额外的信息(例如场景透射图、深度图和大气光),更大的接受野通常会显示出更有效的去雾效果。传统的小接收域生成对抗网络(GAN)无法有效处理超高分辨率的模糊图像。因此,我们提出了一个完全基于端到端学习的条件边界平衡生成对抗网络(BEGAN),该网络扩大了单幅图像去雾的接受野大小。在我们的条件begin中,它的鉴别器是在小尺度输入的模糊图像条件下训练的超高分辨率判别器,可以有效地去除雾霾,同时稳定地保留图像的原始结构。由此,我们可以获得高的PSNR性能(Track 1 - Indoor:排名前4)和快速的计算速度。此外,我们将L1损失、感知损失和GAN损失结合起来作为所提出的条件begin的生成器损失,这允许对各种模糊图像获得稳定的去雾结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fully End-to-End Learning Based Conditional Boundary Equilibrium GAN with Receptive Field Sizes Enlarged for Single Ultra-High Resolution Image Dehazing
A receptive field is defined as the region in an input image space that an output image pixel is looking at. Thus, the receptive field size influences the learning of deep convolution neural networks. Especially, in single image dehazing problems, larger receptive fields often show more effective dehazying by considering the brightness and color of the entire input hazy image without additional information (e.g. scene transmission map, depth map, and atmospheric light). The conventional generative adversarial network (GAN) with small-sized receptive fields cannot be effective for hazy images of ultra-high resolution. Thus, we proposed a fully end-to-end learning based conditional boundary equilibrium generative adversarial network (BEGAN) with the receptive field sizes enlarged for single image dehazing. In our conditional BEGAN, its discriminator is trained ultra-high resolution conditioned on downscale input hazy images, so that the haze can effectively be removed with the original structures of images stably preserved. From this, we can obtain the high PSNR performance (Track 1 - Indoor: top 4th-ranked) and fast computation speeds. Also, we combine an L1 loss, a perceptual loss and a GAN loss as the generator's loss of the proposed conditional BEGAN, which allows to obtain stable dehazing results for various hazy images.
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