利用计算机视觉和机器学习技术开发可提高可靠性的自主组件测试系统

Hoang Anh Phan, Van Tan Duong, Mai Nguyen Thi, Anh Nguyen Thi, Hang Khuat Thi Thu, Thang Luu Duc, Van Hieu Dang, Huu Quoc Dong Tran, Thi Thanh Van Nguyen, Thanh Tung Bui
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引用次数: 0

摘要

本研究在为智能手机摄像头模块开发的自主测试系统中评估了基于计算机视觉的模型,包括直方图分析、逻辑回归、Sift-SVM 和深度学习模型。在实际工厂环境中,由工人操作该系统,对系统性能进行了评估,并对处理时间、灵敏度、特异性、准确性和缺陷率等指标进行了评估。结果表明,Sift-SVM 模型在提高系统可靠性方面潜力最大,处理时间仅为 0.01578 秒,灵敏度高达 99.811%,故障率降低到 1888 PPM。研究结果表明,Sift-SVM 具有在工业中实际应用的潜力,从而提高制造业自动缺陷检测的速度和准确性,降低缺陷率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of an Autonomous Component Testing System with Reliability Improvement Using Computer Vision and Machine Learning
This study evaluated computer vision-based models, including Histogram Analysis, Logistic Regression, Sift-SVM, and Deep learning models, in an autonomous testing system developed for smartphone camera modules. System performance was assessed in a practical factory setting with workers operating the system, and metrics such as processing time, sensitivity, specificity, accuracy, and defect rate were evaluated. Based on the results, the Sift-SVM model demonstrated the greatest potential for enhancing the reliability of the system with a processing time of 0.01578 seconds, a sensitivity of 99.811%, and a reduction in the failure rate to 1888 PPM. The study findings suggest that Sift-SVM has the potential to be practically applied in the industry, thus improving the speed and accuracy of automatic defect detection in manufacturing and reducing the defect rate.
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