Image Restoration by Learning Morphological Opening-Closing Network

Ranjan Mondal, M. Dey, B. Chanda
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引用次数: 25

Abstract

Abstract Mathematical morphology is a powerful tool for image processing tasks. The main difficulty in designing mathematical morphological algorithm is deciding the order of operators/filters and the corresponding structuring elements (SEs). In this work, we develop morphological network composed of alternate sequences of dilation and erosion layers, which depending on learned SEs, may form opening or closing layers. These layers in the right order along with linear combination (of their outputs) are useful in extracting image features and processing them. Structuring elements in the network are learned by back-propagation method guided by minimization of the loss function. Efficacy of the proposed network is established by applying it to two interesting image restoration problems, namely de-raining and de-hazing. Results are comparable to that of many state-of-the-art algorithms for most of the images. It is also worth mentioning that the number of network parameters to handle is much less than that of popular convolutional neural network for similar tasks. The source code can be found here https://github.com/ranjanZ/Mophological-Opening-Closing-Net
学习形态开闭网络的图像恢复
数学形态学是图像处理任务的有力工具。设计数学形态学算法的主要困难是确定算子/滤波器的顺序和相应的结构元素(se)。在这项工作中,我们开发了由膨胀层和侵蚀层交替序列组成的形态网络,这些网络取决于学习到的se,可能形成开放层或关闭层。这些层的正确顺序以及(它们的输出)的线性组合在提取图像特征和处理它们时很有用。网络中的结构元素采用以损失函数最小化为指导的反向传播方法学习。通过将该网络应用于两个有趣的图像恢复问题,即去雨和去雾,证明了该网络的有效性。大多数图像的结果可与许多最先进的算法相媲美。同样值得一提的是,对于类似的任务,要处理的网络参数数量要比流行的卷积神经网络少得多。源代码可以在这里找到https://github.com/ranjanZ/Mophological-Opening-Closing-Net
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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