Perceptron Neural Network Based Machine Learning Approaches for Leather Defect Detection and Classification

Q3 Engineering
Praveen Kumar Moganam, Denis Ashok Sathia Seelan
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引用次数: 7

Abstract

Detection of defects in a typical leather surface is a difficult task due to the complex, non-homogenous and random nature of texture pattern. This paper presents a texture analysis based leather defect identification approach using a neural network classification of defective and non-defective leather. In this work, Gray Level Co-occurrence Matrix (GLCM) is used for extracting different statistical texture features of defective and non-defective leather. Based on the labelled data set of texture features, perceptron neural network classifier is trained for defect identification. Five commonly occurring leather defects such as folding marks, grain off, growth marks, loose grain and pin holes were detected and the classification results of perceptron network are presented. Proposed method was tested for the image library of 1232 leather samples and the accuracy of classification for the defect detection using confusion matrix is found to be 94.2%. Proposed method can be implemented in the industrial environment for the automation of leather inspection process.
基于感知器神经网络的皮革缺陷检测与分类机器学习方法
由于纹理图案的复杂性、非均匀性和随机性,对典型皮革表面缺陷的检测是一项困难的任务。本文提出了一种基于纹理分析的皮革缺陷识别方法,利用神经网络对皮革缺陷和非缺陷进行分类。在这项工作中,灰度共生矩阵(GLCM)用于提取缺陷皮革和非缺陷皮革的不同统计纹理特征。基于标记的纹理特征数据集,训练感知器神经网络分类器进行缺陷识别。对皮革中常见的折叠痕、脱纹、生长痕、松纹和针孔等5种缺陷进行了检测,并给出了感知器网络的分类结果。对1232个皮革样本的图像库进行了测试,发现利用混淆矩阵进行缺陷检测的分类准确率为94.2%。该方法可在工业环境中实现皮革检测过程的自动化。
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来源期刊
Instrumentation Mesure Metrologie
Instrumentation Mesure Metrologie Engineering-Engineering (miscellaneous)
CiteScore
1.70
自引率
0.00%
发文量
25
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