Yarn-dyed Fabric Defect Detection with YOLOV2 Based on Deep Convolution Neural Networks

Hongwei Zhang, Ling-jie Zhang, Pengfei Li, De Gu
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引用次数: 50

Abstract

To reduce labor costs for manual extract image features of yarn-dyed fabric defects, a method based on YOLOV2 is proposed for yarn-dyed fabric defect automatic localization and classification. First, 276 yarn-dyed fabric defect images are collected, preprocessed and labelled. Then, YOLO9000, YOLO-VOC and Tiny YOLO are used to construct fabric defect detection models. Through comparative study, YOLO-VOC is selected to further model improvement by optimize super-parameters of deep convolutional neural network. Finally, the improved deep convolutional neural network is tested for yarn-dyed fabric defect detection on practical fabric images. The experimental results indicate the proposed method is effective and low labor cost for yarn-dyed fabric defect detection.
基于深度卷积神经网络的YOLOV2色织织物缺陷检测
为了减少人工提取色织疵点图像特征的人工成本,提出了一种基于YOLOV2的色织疵点自动定位分类方法。首先,采集276张色织疵点图像,进行预处理和标记。然后使用YOLO9000、YOLO- voc和Tiny YOLO构建织物缺陷检测模型。通过对比研究,选择YOLO-VOC,通过优化深度卷积神经网络的超参数进一步改进模型。最后,在实际织物图像上对改进的深度卷积神经网络进行了色织疵点检测。实验结果表明,该方法对色织织物疵点检测有效,人工成本低。
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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