论文标题

基于正交转换的生成对抗网络用于图像去悬取

Orthogonal Transform based Generative Adversarial Network for Image Dehazing

论文作者

Kumar, Ahlad, Sanathra, Mantra, Khare, Manish, Khare, Vijeta

论文摘要

Dimage Dehazing已成为任何计算机视觉任务的关键预处理步骤之一。大多数飞行方法都试图估算传输图以及大气光,以在图像域中获取脱掩的图像。在本文中,我们提出了一种新颖的端到端体系结构,该体系结构直接估计了Krawtchouk变换域中的Dhazed图像。为此,添加了体系结构中的自定义Krawtchouk卷积层(KCL)。 KCL是使用Krawtchouk基础函数构建的,该功能将图像从空间域转换为Krawtchouk变换域。另一个卷积层是在称为逆krawtchouk卷积层(IKCL)的结构的末端添加的,该层将图像从转换域转换回空间域。已经观察到,雾度主要存在于朦胧图像的较低频率中,其中krawtchouk变换有助于分别分析图像的高和低频。我们将架构分为两个分支,上部分支处理较高的频率,而下部分支则处理图像的下频率。与上部分支相比,下层分支更深入,以解决下频率中存在的雾度。使用所提出的基于正交变换的生成对抗网络(Otgan)体系结构进行图像去悬式,与当前的最新方法相比,我们能够获得竞争性结果。

Image dehazing has become one of the crucial preprocessing steps for any computer vision task. Most of the dehazing methods try to estimate the transmission map along with the atmospheric light to get the dehazed image in the image domain. In this paper, we propose a novel end-to-end architecture that directly estimates dehazed image in Krawtchouk transform domain. For this a customized Krawtchouk Convolution Layer (KCL) in the architecture is added. KCL is constructed using Krawtchouk basis functions which converts the image from the spatial domain to the Krawtchouk transform domain. Another convolution layer is added at the end of the architecture named as Inverse Krawtchouk Convolution Layer (IKCL) which converts the image back to the spatial domain from the transform domain. It has been observed that the haze is mainly present in lower frequencies of hazy images, wherein the Krawtchouk transform helps to analyze the high and low frequencies of the images separately. We have divided our architecture into two branches, the upper branch deals with the higher frequencies while the lower branch deals with the lower frequencies of the image. The lower branch is made deeper in terms of the layers as compared to the upper branch to address the haze present in the lower frequencies. Using the proposed Orthogonal Transform based Generative Adversarial Network (OTGAN) architecture for image dehazing, we were able to achieve competitive results when compared to the present state-of-the-art methods.

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