MAA-YOLOv8: enhanced steel surface defect detection through multi-head attention mechanism and lightweight feature fusion

Feng Han, Hua Han, Rui Zhang, Yong Zou, Long Xue, Caimei Wang
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Abstract

In the process of industrial production, product defects often arise due to improper operations among other reasons, rendering the detection of such flaws an indispensable procedure. However, the vast array of defect types, coupled with their complex characteristics, poses ongoing challenges for contemporary defect detection algorithms within industrial settings. To solve this problem, the present study introduces an enhanced steel surface defect detection model based on the modified YOLOv8 algorithm—termed the MAA-YOLOv8 model—to augment the accuracy and practicality of the algorithm. Initially, a multi-head attention mechanism was incorporated into the C2f to bolster the feature extraction capabilities within the backbone network and diversify the attention maps. Secondly, in the neck structure, we design a multi-channel feature fusion module (McPAN) to solve the problem of balance between computational efficiency and the ability to capture useful features. A series of experiments conducted on the NEU-DET dataset reveal that the MAA-YOLOv8 model achieves a mean Average Precision (mAP) of 94.4\%, representing an enhancement of 11.1\% over the original YOLOv8s model. The MAA-YOLOv8 model proposed in this study substantially elevates the performance of steel surface defect detection while ensuring the speed of detection.
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MAA-YOLOv8:通过多头关注机制和轻量级特征融合加强钢材表面缺陷检测
在工业生产过程中,产品缺陷往往是由于操作不当等原因造成的,因此检测此类缺陷是一项不可或缺的程序。然而,缺陷类型繁多,特征复杂,给工业环境中的现代缺陷检测算法带来了持续的挑战。为解决这一问题,本研究在改进的 YOLOv8 算法基础上引入了一种增强型钢材表面缺陷检测模型--MAA-YOLOv8 模型,以提高该算法的准确性和实用性。首先,在 C2f 中加入了多头关注机制,以增强骨干网络内的特征提取能力,并使关注图谱多样化。其次,在颈部结构中,我们设计了多通道特征融合模块(McPAN),以解决计算效率和捕获有用特征能力之间的平衡问题。在NEU-DET数据集上进行的一系列实验表明,MAA-YOLOv8模型的平均精度(mAP)达到了94.4%,比原始YOLOv8s模型提高了11.1%。本研究提出的 MAA-YOLOv8 模型在保证检测速度的同时,大幅提升了钢材表面缺陷检测的性能。
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