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Detection and Classification of Whiteflies and Fruit Flies Using YOLO

机译:使用YOLO的粉虱和果蝇的检测和分类

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Pests such as whiteflies and fruit flies are very small and are impractical to find and locate using only the naked eye. Pests Detection and monitoring will greatly help the farmers to detect and locate pests even if they are very small and even if they are too far from their farms. In this study, YOLOV3 was used to classify and detect objects, specifically whiteflies and fruit flies. The researchers used a Raspberry Pi camera to gather images. Moreover, the researcher provides desktop and web application to display images obtained by the Raspberry Pi camera. Based on the confusion matrix (Table 3), the model obtained an overall accuracy of 83.07% in classifying and detecting whiteflies and fruit flies.
机译:粉虱和果蝇等害虫非常小,并且只使用肉眼找到和定位是不切实际的。 害虫检测和监测将极大地帮助农民来检测和定位害虫即使它们很小,甚至从农场太远。 在本研究中,YOLOV3用于分类和检测物体,特别是粉虱和果蝇。 研究人员使用覆盆子PI相机来收集图像。 此外,研究人员提供桌面和Web应用程序,以显示由覆盆子PI相机获得的图像。 基于混淆矩阵(表3),该模型在分类和检测粉虱和果蝇中获得了83.07%的总精度。

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