利用强化学习对文档图像进行选择性去噪

Divya Srivastava, Gaurav Harit
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摘要

图像去噪是指去除图像中不需要的噪声。虽然有许多技术可用于对给定的输入噪声图像进行去噪,但这些方法是对图像整体进行处理,假定噪声均匀地影响整个图像。如果输入的噪声影响到图像的局部,那么采用试图对整个图像进行去噪处理的方法就会对干净的部分产生不利影响。为解决这一问题,我们提出了一种基于深度强化学习的框架,旨在克服这一局限性,并为具有非均匀分布噪声的图像取得更好的效果。我们提出了一个两步程序,首先识别噪声斑块,然后对提取的斑块进行去噪处理。我们使用基于强化学习的方法进行噪声定位,并使用 PixelRL 去除噪声。我们专门为噪声定位问题准备了一个综合数据集,并使用各种噪声模式(如高斯噪声、咖啡渍和墨水渗漏)在干净的文档图像中诱导噪声补丁。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Selective denoising in document images using reinforcement learning

Image denoising deals with removal of unwanted noise from images. While there have been many techniques that can be applied to denoise a given input noisy image, the methods process an image in its entirety, assuming that the noise uniformly affects the entire image. For inputs where the noise affects a localised part of the image, applying methods that attempt to denoise the entire image can adversely affect the clean portions. To address this problem, we propose a deep reinforcement learning-based framework aiming to overcome this limitation and achieve better results for images with non-uniformly distributed noise. We propose a two-step procedure that first identifies the noisy patch and then denoises the extracted patch. We use a reinforcement learning-based approach for noise localization and use PixelRL for noise removal. We have prepared a comprehensive dataset specifically for the noise localization problem, and noise patches are induced in clean document images using various noise patterns, such as Gaussian noise, coffee stains, and ink bleeds.

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