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Pitaya detection in orchards using the MobileNet-YOLO model

机译:使用MobileNet-YOLO模型检测果园中的火龙果

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The real-time detection and recognition of pitaya fruit is an important prerequisite for automatic picking. We combined with the current deep learning method with good recognition accuracy to realize the real-time detection and identification of pitaya fruit. Firstly, we collected a large number of pictures of pitaya fruit for labeling, and completed the production of data sets of Pitaya fruit. Then we use YOLOV3, YOLOV3-tiny and MobileNet-YOLO network models to train. After training, we test the performance of the trained model on the test data set. The experimental results show that the improved MobileNet-YOLO model has better detection speed than the YOLOV3 model, and the detection accuracy is better than the YOLOV3-tiny model. It can take into account the detection efficiency and accuracy, and detect the Pitaya fruit in the orchard in real time. Moreover, the MobileNet-YOLO model is a lightweight model, which can be deployed to the picking machine in the future, which can effectively provide Pitaya fruit detection and be applied to the actual environment of the orchard.
机译:实时检测和识别火龙果是自动采摘的重要前提。我们结合目前的深度学习方法,具有良好的识别精度,实现了火龙果的实时检测与识别。首先,我们采集了大量的火龙果图片进行标记,并完成了火龙果数据集的制作。然后,我们使用YOLOV3,YOLOV3-tiny和MobileNet-YOLO网络模型进行训练。训练后,我们在测试数据集上测试训练后模型的性能。实验结果表明,改进后的MobileNet-YOLO模型具有比YOLOV3模型更好的检测速度,检测精度优于YOLOV3-tiny模型。它可以考虑检测效率和准确性,并实时检测果园中的火龙果。而且,MobileNet-YOLO模型是一种轻量级模型,将来可以部署到采摘机上,可以有效地提供Pitaya水果检测功能,并可以应用于果园的实际环境。

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