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A PCNN-Based Edge Detection Algorithm for Rock Fracture Images

机译:基于PCNN的岩石破裂图像边缘检测算法

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Image segmentation has attracted the attention of researchers for many decades. Different approaches have been developed in order to find out the solution in many different segmentation situations. In this paper a novel method for rock fracture image using improved pulse coupled neural networks (PCNN) is presented. We apply progressive scan and region marked method to detect accurate edges of rock fracture images, the experiment results show that the proposed method can be used as a new image edge detection method. Compared to the traditional edge detection algorithms such as Canny operator and the other edge detection operators (e.g. vector gradient and MV), the proposed method can easily obtain the rock fracture images' orientations, curvatures, lengths, apertures and other useful information.
机译:图像分割吸引了研究人员数十年的注意力。为了找到在许多不同的分割情况下的解决方案,已经开发了不同的方法。本文提出了一种使用改进的脉冲耦合神经网络(PCNN)的岩石破裂图像的新方法。我们应用渐进扫描和区域标记法来检测岩石裂缝图像的准确边缘,实验结果表明该方法可作为一种新的图像边缘检测方法。与传统的边缘检测算法(例如Canny算子和其他边缘检测算子)(例如矢量梯度和MV)相比,该方法可以轻松获得岩石裂缝图像的方向,曲率,长度,孔径和其他有用信息。

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