ECM-YOLO: a real-time detection method of steel surface defects based on multiscale convolution.

IF 1.4 3区 物理与天体物理 Q3 OPTICS
Chunman Yan, Ee Xu
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引用次数: 0

Abstract

Steel surface defects, characterized by multiple types, varied scales, and overlapping occurrences, directly impact the quality, performance, and reliability of industrial products. Proposing a high-precision and high-speed steel surface defect detection algorithm is crucial for ensuring product quality. In this regard, this paper introduces ECM-YOLO, a detection network based on YOLOv8n. First, addressing the insufficient information capture of the C2f module, the C2f enhanced multiscale convolution processing (C2f_EMSCP) module is proposed, enhancing global and local feature capture capabilities through multiscale convolutions. Second, to further enhance the network's robustness and focus on critical information, the channel prior convolutional attention (CPCA) mechanism is integrated between the backbone and neck networks to facilitate more efficient information transmission. Last, a novel, to the best of our knowledge, detection head, i.e., multiscale simple and efficient anchor matching head (MultiSEAMHead), is proposed to mitigate accuracy issues arising from overlaps between different types of defects. Experimental results demonstrate that ECM-YOLO achieves mAPs of 78.9% and 68.2% on the NEU-DET and GC 10-DET data sets, respectively, outperforming YOLOv8n by 2.5% and 4.4%. Moreover, ECM-YOLO excels in model parameters, computational efficiency, and inference speed compared with other models. These findings highlight the applicability of ECM-YOLO for real-time defect detection in industrial settings.

ECM-YOLO:基于多尺度卷积的钢材表面缺陷实时检测方法。
钢铁表面缺陷具有类型多、规模大、重叠发生的特点,直接影响工业产品的质量、性能和可靠性。提出一种高精度、高速的钢表面缺陷检测算法对保证产品质量至关重要。在这方面,本文介绍了基于YOLOv8n的ECM-YOLO检测网络。首先,针对C2f模块信息捕获不足的问题,提出了C2f增强多尺度卷积处理(C2f_EMSCP)模块,通过多尺度卷积增强全局和局部特征捕获能力。其次,为了进一步增强网络的鲁棒性和对关键信息的关注,在骨干网络和颈部网络之间集成了通道先验卷积注意(CPCA)机制,以促进更高效的信息传递。最后,就我们所知,提出了一种新的检测头,即多尺度简单高效的锚点匹配头(MultiSEAMHead),以减轻不同类型缺陷之间重叠引起的精度问题。实验结果表明,ECM-YOLO在nue - det和GC - 10-DET数据集上的map准确率分别为78.9%和68.2%,分别比YOLOv8n高2.5%和4.4%。此外,与其他模型相比,ECM-YOLO在模型参数、计算效率和推理速度方面都具有优势。这些发现突出了ECM-YOLO在工业环境中实时缺陷检测的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.40
自引率
10.50%
发文量
417
审稿时长
3 months
期刊介绍: The Journal of the Optical Society of America A (JOSA A) is devoted to developments in any field of classical optics, image science, and vision. JOSA A includes original peer-reviewed papers on such topics as: * Atmospheric optics * Clinical vision * Coherence and Statistical Optics * Color * Diffraction and gratings * Image processing * Machine vision * Physiological optics * Polarization * Scattering * Signal processing * Thin films * Visual optics Also: j opt soc am a.
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