基于yolov5的芒果原位检测与成熟度分级深度学习模型

Jonathan S. Ignacio, Katreen Nicole A. Eisma, M. V. Caya
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引用次数: 1

摘要

在本文中,研究人员主要利用YOLOv5识别芒果,并利用CIELAB颜色空间对芒果的成熟度进行分类。在这项研究中,研究人员使用YOLOv5来识别芒果,并使用CIELAB来对芒果的成熟度进行分类。CIELAB是推荐的颜色系统,因为它与人眼感知颜色的方式非常相似。因为OpenCV功能读取RGB帧,研究人员需要一种方法将这些RGB像素转换为更常见的L*a*b*颜色空间。L*(亮度)、a*(红-绿)和b*(蓝-黄)是CIELAB系统中定义颜色的三个维度(黄-蓝)。研究人员使用*和b*通道来确定成熟和未成熟芒果的范围。该系统在树莓派4上运行,连接到一个捕捉实时视频馈送的摄像头。结果表明,即使与其他大小、形状和颜色相似的水果混合在一起,这个小工具也能识别芒果。然而,有时设备可能会将柠檬误认为芒果,这可能是由于相机的色彩感知能力差,所获取图像中的黑暗区域或照明不足。研究人员建议将反应时间选择在3到5秒之间,因为相机必须准确地检测到水果。总体而言,在人工照明和实际店内照明下进行的测试获得的准确度值分别为86.26%和83.08%。
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A YOLOv5-based Deep Learning Model for In-Situ Detection and Maturity Grading of Mango
In this paper, the researchers focused on identifying mangoes using YOLOv5 and classifying their degree of ripeness using CIELAB color space. The researchers used YOLOv5 to identify mangoes and CIELAB to classify their ripeness in this study. CIELAB is the recommended color system because it closely resembles how the human eye perceives color. Because the OpenCV feature reads frames in RGB, the researchers need a way to transform those RGB pixels into the more common L*a*b* color space. L* (lightness), a* (red-green), and b* (blue-yellow) are the three dimensions in which colors are defined in the CIELAB system (yellow-blue). The researchers used both the* and b* channels to determine the range of ripe and unripe mangoes. The system operates on a Raspberry Pi 4 connected to a camera that captures real-time video feed. Results showed that the gadget could recognize mangoes even when mixed with other fruit types with comparable sizes, shapes, and colors. However, there are times when the device may mistake a lemon for a mango, possibly due to the camera’s poor color perception, darkened areas within the acquired image, or insufficient illumination. The researchers suggest selecting a response time between three and five seconds as the camera must accurately detect the fruit. Overall, the accuracy values obtained from the tests done under artificial and actual in-store lighting were 86.26% and 83.08%.
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