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Weak Supervised Surface Defect Detection Method Based on Selective Search and CAM

机译:基于选择性搜索和CAM的弱监督表面缺陷检测方法

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Due to the large scale variation of surface defects of different types of strip steel, there are limitations in using threshold segmentation to locate objects, we propose a surface defect detection algorithm combining selective search and class activation mapping (CAM) to improve objects localization. First, we use selective search to generate defect bounding box in the image, and predicts the classification and CAM of the defect in the image through the trained model. Then, in the defect detection, filter the bounding box with the classification information of the defect as priori knowledge. We only retain the bounding box that approximate the shape of the defect and map the filtered defect bounding box to the CAM of the corresponding defect. Finally, select the bounding box with the highest score as a detection result. Experiment results show that the proposed method can achieve a mean average precision of 91.1% on our dataset. And it can more accurately locate defects in the image. Compared with traditional CAM, our method has more excellent detection performance in surface defect detection applications of strip steel.
机译:由于不同类型钢带材表面缺陷的变化幅度较大,在使用阈值分割来定位对象方面存在局限性,我们提出了一种结合选择性搜索和类激活映射(CAM)的表面缺陷检测算法来改善对象的定位。首先,我们使用选择性搜索在图像中生成缺陷边界框,并通过训练后的模型预测图像中缺陷的分类和CAM。然后,在缺陷检测中,将具有缺陷的分类信息的边界框作为先验知识进行过滤。我们仅保留近似缺陷形状的边界框,并将过滤后的缺陷边界框映射到相应缺陷的CAM。最后,选择得分最高的边界框作为检测结果。实验结果表明,该方法在我们的数据集上可以达到91.1%的平均精度。而且它可以更准确地定位图像中的缺陷。与传统的CAM相比,我们的方法在带钢表面缺陷检测应用中具有更优异的检测性能。

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