New image denoising method using multiple-minimum cuts based on maximum-flow neural network

Masatoshi Sato, T. Otake, H. Aomori, Mamoru Tanaka
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引用次数: 2

Abstract

In recent years, graph-cuts has became increasingly useful methods for image processing problems such as the image denoising, the image segmentation, the stereo matching and so on. In graph-cuts, a given image is replaced by a grid graph with defined edge weights according to each problem, and the image is processed by using a minimum cut of the graph. Therefore, the most part of the graph-cuts algorithm is based on the typical minimum cut algorithm. However, graph-cuts still has two issues of processing time and accuracy of output images because of the conventional minimum cut algorithm. Moreover, the relation between the high-speed processing and the improvement of accuracy is basically a trade-off relation. In this research, we propose a new image denoising method using multiple-minimum cuts based on the maximum-flow neural network (MF-NN) which is our proposed minimum cut algorithm based on the nonlinear resistive circuit analysis. The MF-NN has two unique features not shared by the conventional minimum cut algorithm. One is that multiple-minimum cuts can be obtained simultaneously, and the other is to be suitable for hardware implementation. By using the MF-NN's features, the we find novel solutions for two issues of the conventional graph-cuts.
基于最大流量神经网络的多重最小分割图像去噪新方法
近年来,图切割已经成为图像去噪、图像分割、立体匹配等图像处理问题的一种越来越有用的方法。在图切割中,根据每个问题将给定的图像替换为具有定义的边权的网格图,并使用图的最小切割来处理图像。因此,图切算法的大部分是基于典型的最小切算法。然而,由于传统的最小切割算法,图形切割仍然存在处理时间和输出图像精度两个问题。此外,高速加工与精度提高之间基本上是一种权衡关系。在本研究中,我们提出了一种基于最大流量神经网络(MF-NN)的多重最小切割图像去噪方法,这是我们基于非线性电阻电路分析提出的最小切割算法。MF-NN具有传统最小割算法所不具有的两个独特特征。一是可同时获得多个最小切割量,二是适合硬件实现。通过使用MF-NN的特征,我们找到了两个传统图切问题的新颖解决方案。
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