基于时间戳的低计算实时鞋品检测技术在鞋品生产跟踪中的应用

Tith Vong, C. Jeenanunta, Apinun Tunpan, Nisit Sirimarnkit
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引用次数: 1

摘要

生产计划人员无法实时获得产品实际数量的最新信息。直到几天后,他们才意识到这是无与伦比的生产。因此,计划者需要修改他们的生产计划,保留这种不匹配的生产能力,这导致制造业浪费了大量的时间和金钱。生产结果通常在一天结束时手工计算并记录在纸上。提出了一种带时间戳的产品计数图像处理系统。YOLOv4-tiny和DNN-OpenCV用于检测目标。检测到的目标将被计数使用交集检测和tesseract引擎从视频中提取时间。使用10折叠技术对106张目标照片进行目标检测训练。用8个视频测试了该方法的计数精度和时间戳精度。测试结果表明,与使用时间戳进行人工计数相比,该方法的目标计数准确率达到100%,时间戳准确率达到80%。该方法适用于对带有时间戳的对象进行实时计数。
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The Low Computation and Real-Time Shoe Detection with Timestamp for Production Tracking in Shoe Manufacturing
Production planners could not get the update on the actual number of products in real-time. They do not realize the unmatched production until a few days later. Thus, the planners need to revise their production plan with reserve capacity for this unmatched production, and it causes manufacturing to waste a lot of time and money. The production outcome is usually manually counted at the end of the day and recorded on paper. This paper proposes an image processing system for counting products with a timestamp. The YOLOv4-tiny and DNN-OpenCV are utilized to detect an object. The detected object will be counted using the intersection detection and tesseract engine to extract time from the video. The object detection is trained using the 10 folds technique with 106 object photos. The proposed approach is tested with 8 videos for counting accuracy and timestamp accuracy. The testing result reveals that our proposed method achieves 100% of object counting and timestamp accuracy of 80 % compared with the manual counting with the timestamp. The proposed technique is suitable for counting objects with timestamps in real-time.
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