Three-stage deep learning system for recognizing contaminated serial numbers in hard disk drive: a comparison study with two-stage deep learning model

C. Chousangsuntorn, T. Tongloy, S. Chuwongin, S. Boonsang
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Abstract

The previous two-stage deep learning model for detecting and classifying misidentified serial numbers on the defect hard disk drive (HDD) slider was proposed by authors. We found that the threshold level adjusted during preprocessing process could limit the robustness of the two-stage model in large-scale manufacturing. Thus, we proposed a three-stage deep learning model comprised of 1) region of interest (ROI) detection and cropping, 2) character detection and cropping, and 3) character classification. Object detection algorithm and classification network used in this model are based on YOLO v.4 and EfficientNet-B0. The 1000 images captured by the digital camera were used for training (600 images) and validation (400 images) of the ROI detection model. The other 1000 captured images were used for testing the performance of the proposed three-stage model, then we compared them with those obtained from the previous two-stage model. The proposed three-stage model reaches F1 score = 0.997 and recovery rate up to 95.9%, while the two-stage model yields only 0.948 and 73%, respectively.
硬盘驱动器污染序列号识别的三阶段深度学习系统:与两阶段深度学习模型的比较研究
先前的两阶段深度学习模型是由作者提出的,用于检测和分类缺陷硬盘驱动器(HDD)滑块上的错误序列号。我们发现在预处理过程中调整的阈值水平会限制两阶段模型在大规模制造中的鲁棒性。因此,我们提出了一个由1)感兴趣区域(ROI)检测和裁剪,2)字符检测和裁剪以及3)字符分类组成的三阶段深度学习模型。本模型使用的目标检测算法和分类网络基于YOLO v.4和EfficientNet-B0。数码相机拍摄的1000幅图像用于ROI检测模型的训练(600幅)和验证(400幅)。另外1000张捕获的图像用于测试所提出的三阶段模型的性能,然后我们将它们与之前的两阶段模型获得的图像进行比较。三阶段模型的F1得分为0.997,回收率高达95.9%,而两阶段模型的回收率分别仅为0.948和73%。
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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