EFFECTIVENESS OF U-NET IN DENOISING RGB IMAGES

Rina Komatsu, T. Gonsalves
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引用次数: 4

Abstract

Digital images often contain “noise” which takes away their clarity and sharpness. Most of the existing denoising algorithms do not offer the best solution because there are difficulties such as removing strong noise while leaving the features and other details of the image intact. Faced with the problem of denoising, we tried solving it with a Convolutional Neural Network architecture called the “U-Net”. This paper deals with the training of a U-Net to remove 3 different kinds of noise: Gaussian, Blockiness, and Camera shake. Our results indicate the effectiveness of U-Net in denoising images while leaving their features and other details intact
u-net在RGB图像去噪中的有效性
数字图像通常包含“噪声”,这会降低图像的清晰度和清晰度。大多数现有的去噪算法都不能提供最好的解决方案,因为存在一些困难,比如在保持图像特征和其他细节完整的情况下去除强噪声。面对去噪问题,我们尝试用一种叫做“U-Net”的卷积神经网络架构来解决它。本文讨论了U-Net的训练,以去除3种不同的噪声:高斯噪声、块噪和相机抖动。我们的结果表明,U-Net在保持图像特征和其他细节不变的情况下,对图像去噪是有效的
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