基于跨层特征融合的轻量级钢铁表面缺陷图像级分割方法

Peng Wang, Liangliang Li, Baolin Sha, Xiaoyan Li, Zhigang Lü
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引用次数: 0

摘要

钢材广泛应用于航空航天、机械和汽车行业。表面缺陷不仅会对钢材的外观造成负面影响,还会大大降低钢材的耐磨性、耐高温性、耐腐蚀性和疲劳强度。因此,检测钢材表面缺陷对提高钢材生产质量非常重要。由于工业领域的表面缺陷样本有限,给准确检测高质量材料的缺陷带来了巨大挑战。此外,现有的缺陷检测模型非常复杂,不易部署。为解决这一问题,我们提出了一种适用于钢铁缺陷的轻量级缺陷检测网络。设计中的跨层特征融合(CFF)可以有效利用多层语义特征,从而促进钢铁中微小缺陷的检测。其次,设计了一种新的损失函数,以弥补数据量小和数据分布不均匀的问题。实验结果表明,本文提出的钢材表面缺陷检测方法在广泛使用的公共数据集(如 RSDDS、NEUS 和 NRSD-CR(test))上实现了最高的检测性能,同时保持了最低的模型复杂度。
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A lightweight image-level segmentation method for steel surface defects based on cross-layer feature fusion
Steel is widely used in the aerospace, machinery and automotive industries. Surface defects not only have a negative impact on the appearance of steel but also significantly reduce its wear resistance, high temperature resistance, corrosion resistance and fatigue strength. Therefore, the detection of steel surface defects is very important to improve the quality of steel production. The limited availability of surface defect samples in the industrial sector poses significant challenges for the accurate detection of defects in high-quality materials. In addition, the existing defect detection model is highly complex and not easy to deploy. To solve this problem, a lightweight defect detection network suitable for steel defects is proposed. The cross-layer feature fusion (CFF) in the design enables effective utilisation of multi-layer semantic features, facilitating the detection of small defects in steel. Secondly, a new loss function is designed to make up for the problems of small data volume and uneven data distribution. The experimental results demonstrate that the steel surface defect detection method proposed in this paper achieves the highest detection performance on widely used public datasets such as RSDDS, NEUS and NRSD-CR(test), while maintaining the lowest model complexity.
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