基于注意机制和多任务融合的织物缺陷检测网络

Z. Peng, Xinyi Gong, Zhenfeng Lu, Xiangyi Xu, Bengang Wei, Mukesh Prasad
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引用次数: 2

摘要

织物是一种重要的材料,它应用于纺织制造的整个过程,如纺纱、织造、印染、整理和服装制造。由于织物在生产过程中不可避免地会出现织物表面缺陷,因此织物缺陷检测对织物生产具有重要意义。现有的基于cnn的疵点检测方法在疵点形状小、与背景灰度差小、疵点类型不明确等方面面临挑战。为了解决这一问题,本文提出了一种基于注意力机制和多任务融合模块的织物缺陷检测网络——AMTFNet。一方面,注意机制模块迫使网络注意缺陷。另一方面,多任务融合模块帮助AMTFNet利用特征拼接进一步提高分类效果。实验结果表明,AMTFNet的precision-score、recall-score和F1-score分别达到0.980、0.994和0.987。该方法可成功应用于工业织物材料的检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Fabric Defect Detection Network Based on Attention Mechanism and Multi-Task Fusion
Fabric is an important material, which is applied in the entire process of textile manufacturing, such as spinning, weaving, dyeing, printing, and finishing, and garments manufacturing. As defects on the surface of the fabric are inevitable in the process of fabric production, the defect detection of fabric is significant for fabric manufacture. The current CNN-based defect detection methods face several challenges when tackling the fabric defect with a tiny shape, the low grayscale difference with background, and ambiguous defect type. To deal with the problem, we proposed a novel fabric defect detection network – AMTFNet based on the attention mechanism and multi-task fusion module in this paper. On one hand, the attention mechanism module forced networks to pay attention to defects. On the other hand, the multi-task fusion module helps AMTFNet to further improve the classification effect using feature concatenated. The experimental result indicates that the precision-score, recall-score, and F1-score of AMTFNet reach 0.980, 0.994, and 0.987, respectively. The proposed method can be successfully applied in the detection of industrial fabric material.
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