A context-aware progressive attention aggregation network for fabric defect detection

IF 2.2 4区 工程技术 Q1 MATERIALS SCIENCE, TEXTILES
Zhoufeng Liu, Bo Tian, Chunlei Li, Xiao Li, Kaihua Wang
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引用次数: 0

Abstract

Fabric defect detection plays a critical role for measuring quality control in the textile manufacturing industry. Deep learning-based saliency models can quickly spot the most interesting regions that attract human attention from the complex background, which have been successfully applied in fabric defect detection. However, most of the previous methods mainly adopted multi-level feature aggregation yet ignored the complementary relationship among different features, and thus resulted in poor representation capability for the tiny and slender defects. To remedy these issues, we propose a novel saliency-based fabric defect detection network, which can exploit the complementary information between different layers to enhance the representation features ability and discrimination of defects. Specifically, a multi-scale feature aggregation unit (MFAU) is proposed to effectively characterize the multi-scale contextual features. Besides, a feature fusion refinement module (FFR) composed of an attention fusion unit (AFU) and an auxiliary refinement unit (ARU) is designed to exploit complementary important information and further refine the input features for enhancing the discriminative ability of defect features. Finally, a multi-level deep supervision (MDS) is adopted to guide the model to generate more accurate saliency maps. Under different evaluation metrics, our proposed method outperforms most state-of-the-art methods on our developed fabric datasets.
一种用于织物缺陷检测的上下文感知渐进注意力聚合网络
织物缺陷检测在纺织制造业的质量控制中起着至关重要的作用。基于深度学习的显著性模型可以从复杂背景中快速发现最吸引人注意的区域,并已成功应用于织物缺陷检测。然而,以往的方法大多主要采用多级特征聚合,而忽略了不同特征之间的互补关系,导致对微小缺陷的表示能力较差。为了解决这些问题,我们提出了一种新的基于显著性的织物缺陷检测网络,该网络可以利用不同层之间的互补信息来增强缺陷的表征能力和识别能力。具体地,提出了一种多尺度特征聚合单元(MFAU)来有效地表征多尺度上下文特征。此外,设计了一个由注意力融合单元(AFU)和辅助细化单元(ARU)组成的特征融合细化模块(FFR),以利用互补的重要信息,进一步细化输入特征,提高缺陷特征的识别能力。最后,采用多级深度监督(MDS)来指导模型生成更准确的显著性图。在不同的评估指标下,我们提出的方法在我们开发的结构数据集上优于大多数最先进的方法。
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来源期刊
Journal of Engineered Fibers and Fabrics
Journal of Engineered Fibers and Fabrics 工程技术-材料科学:纺织
CiteScore
5.00
自引率
6.90%
发文量
41
审稿时长
4 months
期刊介绍: Journal of Engineered Fibers and Fabrics is a peer-reviewed, open access journal which aims to facilitate the rapid and wide dissemination of research in the engineering of textiles, clothing and fiber based structures.
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