An efficient re-parameterization feature pyramid network on YOLOv8 to the detection of steel surface defect

IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Neurocomputing Pub Date : 2024-11-04 DOI:10.1016/j.neucom.2024.128775
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Abstract

In the field of steel production, the detection of steel surface defects is one of the most important guarantees for the quality of steel production. In the process of defect detection, there are problems regarding the noise of the acquisition background, the scale of defects, and the detection speed. At present, in the face of complex steel surface defects, realizing efficient real-time steel surface defect detection has become a difficult problem. In this paper, we propose a lightweight and efficient real-time defect detection method, LDE-YOLO, based on YOLOv8. First, we propose a lightweight multi-scale feature extraction module, LighterMSMC, which not only achieves a lightweight backbone network, but also effectively guarantees the long range dependence of the features, so as to realize multi-scale feature extraction more efficiently. Secondly, we propose lightweight re-parameterized feature pyramid, DE-FPN, in which the sparse patterns of the overall features and the detailed features of the local features are efficiently captured by the DE-Block, and then efficiently fused by the PAN feature fusion structure. Finally, we propose Efficient Head, which lightens the model by group convolution while its improves the diagonal correlation of the feature maps on some specific datasets, thus enhancing the detection performance. Our proposed LDE-YOLO obtains 80.8 mAP and 75.5 FPS on NEU-DET , 80.5 mAP and 75.5 FPS on GC10-DET. It obtains 2.5 mAP and 4.7 mAP enhancement compared to the baseline model, and the detection speed is also improved by 10.4 FPS, while in terms of the number of floating point operations and parameters of the model reduced by 60.2% and 49.1%, which is sufficient to illustrate its lightweight effectiveness and realize an efficient real-time steel surface defect detection model.
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基于 YOLOv8 的高效重参数化特征金字塔网络用于检测钢铁表面缺陷
在钢铁生产领域,钢铁表面缺陷的检测是钢铁生产质量的重要保证之一。在缺陷检测过程中,存在采集背景噪声、缺陷尺度、检测速度等问题。目前,面对复杂的钢材表面缺陷,实现高效的实时钢材表面缺陷检测已成为一个难题。本文在 YOLOv8 的基础上,提出了一种轻量级高效实时缺陷检测方法 LDE-YOLO。首先,我们提出了轻量级多尺度特征提取模块 LighterMSMC,不仅实现了骨干网络的轻量级,还有效保证了特征的远距离依赖性,从而更高效地实现多尺度特征提取。其次,我们提出了轻量级重参数化特征金字塔 DE-FPN,通过 DE-Block 有效捕捉整体特征的稀疏模式和局部特征的细节特征,再通过 PAN 特征融合结构进行高效融合。最后,我们提出了 Efficient Head,它通过群卷积来简化模型,同时在一些特定数据集上改进了特征图的对角相关性,从而提高了检测性能。我们提出的 LDE-YOLO 在 NEU-DET 上获得了 80.8 mAP 和 75.5 FPS,在 GC10-DET 上获得了 80.5 mAP 和 75.5 FPS。与基线模型相比,分别提高了 2.5 mAP 和 4.7 mAP,检测速度也提高了 10.4 FPS,同时模型的浮点运算次数和参数分别减少了 60.2% 和 49.1%,足以说明其轻量化的有效性,实现了高效的实时钢表面缺陷检测模型。
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来源期刊
Neurocomputing
Neurocomputing 工程技术-计算机:人工智能
CiteScore
13.10
自引率
10.00%
发文量
1382
审稿时长
70 days
期刊介绍: Neurocomputing publishes articles describing recent fundamental contributions in the field of neurocomputing. Neurocomputing theory, practice and applications are the essential topics being covered.
期刊最新文献
An efficient re-parameterization feature pyramid network on YOLOv8 to the detection of steel surface defect Editorial Board Multi-contrast image clustering via multi-resolution augmentation and momentum-output queues Augmented ELBO regularization for enhanced clustering in variational autoencoders Learning from different perspectives for regret reduction in reinforcement learning: A free energy approach
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