基于Yolo算法的咖啡豆选择器的设计与开发

Raihan Putri, Rizkan Tiara
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引用次数: 1

摘要

冲泡咖啡的享受是由很多因素决定的,其中之一就是选择优质的咖啡豆和咖啡粉。咖啡豆的质量取决于形状和大小(满的、半满的或损坏的)。手工检查咖啡豆的大小和形状会受到外界的影响,如疲劳、环境、光线等。在图像处理技术的帮助下,这些因素可以克服。本文设计了一种利用Yolo算法检测咖啡缺陷的工具。该系统由一个摄像头组成,它可以捕捉咖啡豆的图像,然后由树莓派进行处理,并将结果显示在笔记本电脑的屏幕上。使用YOLO算法对100颗咖啡豆进行10次试验,得到43颗完美咖啡豆的平均百分比值为76.54%,那么不完美咖啡豆的平均百分比为73.40%,有48颗咖啡豆和未检测到的咖啡豆,平均百分比值为1%,两类中包含的咖啡豆为6颗,平均百分比值为19.8%。在本研究中,YOLO算法可以保持75%的检测成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Development of a Coffee Bean Selector Using The Yolo Algorithm
The enjoyment of brewed coffee is determined by many things, one of which is choosing quality coffee beans and coffee powder. Quality coffee beans are determined by shape and size (full, half full, or damaged). Checking the size and shape of coffee beans manually is subject to external influences such as fatigue, environment, light, etc. With the help of technologyimage processing, these factors can be overcome. Through this paper a tool is designed to detect coffee defects using the Yolo algorithm. The designed system consists of a camera that captures images of coffee beans which are then processed by the Raspberry Pi and the results are displayed on the laptop screen. Detection results using the YOLO algorithm for 10 trials using 100 coffee beans get an average percentage value of 76.54% for the perfect coffee bean category of 43 coffee beans, then the average percentage of imperfect coffee beans is 73.40% with lots of 48 3 coffee beans and coffee beans were not detected with an average percentage value of 1% and coffee beans included in the two categories were 6 coffee beans with an average percentage value of 19.8%. In this study the YOLO algorithm can maintain an accuracy rate of detection success of 75%.
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