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一种基于改进YOLOv8的轻质带钢表面缺陷检测网络。

A Lightweight Strip Steel Surface Defect Detection Network Based on Improved YOLOv8.

作者信息

Chu Yuqun, Yu Xiaoyan, Rong Xianwei

机构信息

School of Computer Science and Information Engineering, Harbin Normal University, Harbin 150025, China.

School of Physics and Electronic Engineering, Harbin Normal University, Harbin 150025, China.

出版信息

Sensors (Basel). 2024 Oct 9;24(19):6495. doi: 10.3390/s24196495.

Abstract

Strip steel surface defect detection has become a crucial step in ensuring the quality of strip steel production. To address the issues of low detection accuracy and long detection times in strip steel surface defect detection algorithms caused by varying defect sizes and blurred images during acquisition, this paper proposes a lightweight strip steel surface defect detection network, YOLO-SDS, based on an improved YOLOv8. Firstly, StarNet is utilized to replace the backbone network of YOLOv8, achieving lightweight optimization while maintaining accuracy. Secondly, a lightweight module DWR is introduced into the neck and combined with the C2f feature extraction module to enhance the model's multi-scale feature extraction capability. Finally, an occlusion-aware attention mechanism SEAM is incorporated into the detection head, enabling the model to better capture and process features of occluded objects, thus improving performance in complex scenarios. Experimental results on the open-source NEU-DET dataset show that the improved model reduces parameters by 34.4% compared with the original YOLOv8 algorithm while increasing average detection accuracy by 1.5%. And it shows good generalization performance on the deepPCB dataset. Compared with other defect detection models, YOLO-SDS offers significant advantages in terms of parameter count and detection speed. Additionally, ablation experiments validate the effectiveness of each module.

摘要

带钢表面缺陷检测已成为确保带钢生产质量的关键环节。针对带钢表面缺陷检测算法中因采集过程中缺陷尺寸变化和图像模糊导致检测精度低、检测时间长的问题,本文提出了一种基于改进YOLOv8的轻量级带钢表面缺陷检测网络YOLO-SDS。首先,利用StarNet替换YOLOv8的主干网络,在保持精度的同时实现轻量级优化。其次,在颈部引入轻量级模块DWR,并与C2f特征提取模块相结合,增强模型的多尺度特征提取能力。最后,在检测头中引入遮挡感知注意力机制SEAM,使模型能够更好地捕捉和处理被遮挡物体的特征,从而提高在复杂场景下的性能。在开源的NEU-DET数据集上的实验结果表明,改进后的模型与原始YOLOv8算法相比,参数减少了34.4%,同时平均检测精度提高了1.5%。并且在deepPCB数据集上表现出良好的泛化性能。与其他缺陷检测模型相比,YOLO-SDS在参数数量和检测速度方面具有显著优势。此外,消融实验验证了每个模块的有效性。

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