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Visual Saliency Guided Deep Fabric Defect Classification

机译:视觉显着性指导的深层织物缺陷分类

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Fabric defects have an important influence on the quality of the fabric product. Automatic fabric defect detection is a crucial part for quality control in the textile industry. The primary challenge of fabric defects identification is not only to find the existing defects, but also to classify them into different types. In this paper, we propose a novel fabric defect detection and classification method consists of three main steps. Firstly, the fabric image is cropped into a set of image patches and each patch is labeled with specified defect type. Secondly, the visual saliency map is generated from the patch to localize defects with specified visual attention. Then, the combination of visual salience map with raw image input into a convolutional neural network for robust feature representation, and finally output its predicted defect type. During the testing section, defect inspection runs in a sliding window schemes using the trained model, and both the type and position of each defect are obtained simultaneously. Our method tries to investigate the combination of visual saliency and one-stage object detector with feature pyramid, which fully makes use of information from multi-resolution guided with visual attention. Besides, soft-cutoff loss is employed to further improve the performance of the method, and our network can be learnt in an end-to-end manner. Experiments based on our fabric defect image datasets, the proposed method can achieve a 98.52% accuracy of classification. This method is comparable to the usual two-stage detector with more compact model parameters, makes it valuable in the industrial application.
机译:织物缺陷对织物产品的质量有重要影响。自动织物缺陷检测是纺织行业质量控制的关键部分。织物缺陷识别的主要挑战不仅在于发现现有缺陷,而且还要将其分类为不同类型。在本文中,我们提出了一种新的织物缺陷检测和分类方法,该方法包括三个主要步骤。首先,将织物图像裁剪为一组图像补丁,并用指定的缺陷类型标记每个补丁。其次,从贴片生成视觉显着性图,以指定的视觉注意力定位缺陷。然后,将视觉显着图与原始图像相结合,输入到卷积神经网络中以进行鲁棒的特征表示,最后输出其预测的缺陷类型。在测试部分中,使用经过训练的模型以滑动窗口方案运行缺陷检查,并且同时获得每个缺陷的类型和位置。我们的方法试图研究视觉显着性和具有特征金字塔的一级对象检测器的组合,从而充分利用视觉注意引导下的多分辨率信息。此外,采用软截止损耗来进一步改善该方法的性能,并且可以以端到端的方式学习我们的网络。基于我们的织物疵点图像数据集进行的实验表明,该方法可以达到98.52%的分类精度。该方法可与常规的两级检测器相比较,具有更紧凑的模型参数,使其在工业应用中具有价值。

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