A Distributed System-Based Multiplex Networks to Extract Texture Feature

Yang Liu, Wei-qi Yuan
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Abstract

Defect detection is an indispensable part of quality detection in manufacturing. It is a challenging task to recognize defects on the surface of castings with random textures. This paper proposes a texture extraction method based on multiplex networks for defect segmentation in a random background. The proposed method redefines the image information in the form of multiplex network topologies according to the different properties of casting surface texture. Finally, the proposed method segments different texture regions by extracting the similarity of texture primitives in the multiplex networks. The study conducted experiments in a distributed system environment, and the results show that the proposed method is effective in actual industrial data sets. As an interdisciplinary application of network science and machine vision, the proposed method provides a valuable application mode for the development of complex networks in new fields and provides a new research idea for the texture analysis of castings.
基于分布式系统的多路网络纹理特征提取
缺陷检测是制造过程中质量检测的重要组成部分。随机纹理铸件表面缺陷的识别是一项具有挑战性的任务。提出了一种基于多路网络的纹理提取方法,用于随机背景下的缺陷分割。该方法根据铸件表面纹理的不同性质,以多路网络拓扑的形式重新定义图像信息。最后,该方法通过提取多路网络中纹理原语的相似性来分割不同的纹理区域。研究在分布式系统环境下进行了实验,结果表明该方法在实际工业数据集上是有效的。该方法作为网络科学与机器视觉的交叉应用,为复杂网络在新领域的发展提供了有价值的应用模式,为铸件织构分析提供了新的研究思路。
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