基于卷积神经网络的自然图像高脉冲噪声去除

M. Mafi, Walter Izquierdo, M. Adjouadi
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引用次数: 3

摘要

提出了一种基于前馈卷积神经网络(CNN)的脉冲噪声图像平滑滤波器。这个平滑滤波器集成了一个非常深的架构,一个正则化方法,和一个批归一化过程。这种完全集成的方法产生有效的去噪和平滑图像,与原始无噪声图像具有很高的相似性。具体的结构指标是用来评估去噪过程和如何有效地去除脉冲噪声。这个CNN模型还可以处理在训练阶段没有看到的其他噪声水平。本文提出的CNN模型是在训练阶段使用来自伯克利分割数据集(BSD)的400张图像通过20层网络构建的。使用训练阶段未见的8张自然图像的标准测试集获得结果。该方法的优点是根据高相似性度量和符合原始图像的结构度量进行权衡,并与使用最先进的去噪滤波器获得的不同结果进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High Impulse Noise Intensity Removal in Natural Images Using Convolutional Neural Network
This paper introduces a new image smoothing filter based on a feed-forward convolutional neural network (CNN) in presence of impulse noise. This smoothing filter integrates a very deep architecture, a regularization method, and a batch normalization process. This fully integrated approach yields an effectively denoised and smoothed image yielding a high similarity measure with the original noise free image. Specific structural metrics are used to assess the denoising process and how effective was the removal of the impulse noise. This CNN model can also deal with other noise levels not seen during the training phase. The proposed CNN model is constructed through a 20-layer network using 400 images from the Berkeley Segmentation Dataset (BSD) in the training phase. Results are obtained using the standard testing set of 8 natural images not seen in the training phase. The merits of this proposed method are weighed in terms of high similarity measure and structural metrics that conform to the original image and compare favorably to the different results obtained using state-of-art denoising filters.
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