Zhou Mudan, Lu Wentao, Xia Jingbo, Wang Yuhao
School of Information Science & Technology, Xiamen University Tan Kah Kee College, Zhangzhou 363105, China.
School of Electronic Science and Engineering, Xiamen University, Xiamen 361005, China.
Sensors (Basel). 2023 Aug 6;23(15):6982. doi: 10.3390/s23156982.
Defect detection in steel surface focuses on accurately identifying and precisely locating defects on the surface of steel materials. Methods of defect detection with deep learning have gained significant attention in research. Existing algorithms can achieve satisfactory results, but the accuracy of defect detection still needs to be improved. Aiming at this issue, a hybrid attention network is proposed in this paper. Firstly, a CBAM attention module is used to enhance the model's ability to learn effective features. Secondly, an adaptively spatial feature fusion (ASFF) module is used to improve the accuracy by extracting multi-scale information of defects. Finally, the CIOU algorithm is introduced to optimize the training loss of the baseline model. The experimental results show that the performance of our method in this work is superior on the NEU-DET dataset, with an 8.34% improvement in mAP. Compared with major algorithms of object detection such as SSD, EfficientNet, YOLOV3, and YOLOV5, the mAP was improved by 16.36%, 41.68%, 20.79%, and 13.96%, respectively. This demonstrates that the mAP of our proposed method is higher than other major algorithms.
钢材表面缺陷检测主要关注准确识别和精确定位钢材表面的缺陷。深度学习缺陷检测方法在研究中受到了广泛关注。现有算法能够取得令人满意的结果,但缺陷检测的准确率仍有待提高。针对这一问题,本文提出了一种混合注意力网络。首先,使用CBAM注意力模块增强模型学习有效特征的能力。其次,采用自适应空间特征融合(ASFF)模块,通过提取缺陷的多尺度信息来提高准确率。最后,引入CIOU算法优化基线模型的训练损失。实验结果表明,本文方法在NEU-DET数据集上性能优越,mAP提高了8.34%。与SSD、EfficientNet、YOLOV3和YOLOV5等主要目标检测算法相比,mAP分别提高了16.36%、41.68%、20.79%和13.96%。这表明本文提出方法的mAP高于其他主要算法。