A real-time surface defect detection system for industrial products with long-tailed distribution

Xiyu He, Xiang Qian
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引用次数: 4

Abstract

Applying visual recognition algorithms in surface defect detection has aroused increasing interest in industries. Despite the compelling speed advantages over manual detection, many algorithms fail to inspect defects from tail classes, especially where one defect dominates while the others have a few instances. One reason is that most of those computer vision models are proposed for class-balanced datasets while surface defects on industrial products often follow long-tail distributions. Existing studies alleviate this problem by simply adding synthetic data to the tail classes or manually adjusting weights. Herein, we propose: 1) a transformer embedded backbone structure to extract more representative features from the targets; 2) a 3-grids coordinate loss for predicting targets with multi-scale to reduce the targets miss rate. Our system can detect different kinds of surface defects at 125FPS, achieve 9.8% higher mAP and 3-22% higher AP of tail classes than YOLOv4 on long-tailed magnetic tiles datasets. Besides, our experiment on steel plates dataset shows that the effectiveness of our system is not limited to a certain industrial scenario, making it useful for a wide range of automated inspection tasks.
长尾分布工业产品表面缺陷实时检测系统
将视觉识别算法应用于表面缺陷检测已引起业界越来越多的关注。尽管与人工检测相比,有令人信服的速度优势,但许多算法无法从尾类检查缺陷,特别是当一个缺陷占主导地位而其他缺陷只有几个实例时。其中一个原因是,大多数计算机视觉模型都是针对类别平衡数据集提出的,而工业产品的表面缺陷通常遵循长尾分布。现有的研究通过简单地将合成数据添加到尾类或手动调整权重来缓解这个问题。为此,我们提出:1)变压器嵌入骨干结构,从目标中提取更多具有代表性的特征;2) 3格坐标损失,用于多尺度目标预测,降低目标脱靶率。在长尾磁瓦数据集上,我们的系统可以以125FPS的速度检测出不同类型的表面缺陷,与YOLOv4相比,尾巴类的mAP提高了9.8%,AP提高了3-22%。此外,我们在钢板数据集上的实验表明,我们的系统的有效性并不局限于特定的工业场景,使其适用于广泛的自动检测任务。
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