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Automatic Fabric Defect Detection Using Cascaded Mixed Feature Pyramid with Guided Localization

机译:使用级联混合特征金字塔和导向定位的自动织物缺陷检测

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摘要

Generic object detection algorithms for natural images have been proven to have excellent performance. In this paper, fabric defect detection on optical image datasets is systematically studied. In contrast to generic datasets, defect images are multi-scale, noise-filled, and blurred. Back-light intensity would also be sensitive for visual perception. Large-scale fabric defect datasets are collected, selected, and employed to fulfill the requirements of detection in industrial practice in order to address these imbalanced issues. An improved two-stage defect detector is constructed for achieving better generalization. Stacked feature pyramid networks are set up to aggregate cross-scale defect patterns on interpolating mixed depth-wise block in stage one. By sharing feature maps, center-ness and shape branches merges cascaded modules with deformable convolution to filter and refine the proposed guided anchors. After balanced sampling, the proposals are down-sampled by position-sensitive pooling for region of interest, in order to characterize interactions among fabric defect images in stage two. The experiments show that the end-to-end architecture improves the occluded defect performance of region-based object detectors as compared with the current detectors.
机译:事实证明,用于自然图像的通用对象检测算法具有出色的性能。本文对光学图像数据集上的织物缺陷检测进行了系统的研究。与通用数据集相比,缺陷图像是多尺度的,充满噪声的并且模糊。背光强度也将对视觉感知敏感。为了解决这些不平衡的问题,需要收集,选择和使用大型织物缺陷数据集,以满足工业实践中的检测要求。构造了一种改进的两级缺陷检测器,以实现更好的通用性。在第一阶段,在插入的混合深度方向块中,建立堆叠的特征金字塔网络以聚集跨尺度缺陷模式。通过共享特征图,中心度和形状分支将级联模块与可变形卷积合并在一起,以过滤和完善建议的导向锚。在平衡采样之后,通过对位置感兴趣的区域进行位置敏感池对提议进行下采样,以表征第二阶段中织物缺陷图像之间的相互作用。实验表明,与当前的检测器相比,端到端体系结构提高了基于区域的对象检测器的遮挡缺陷性能。

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