基于YOLOv5的番茄识别与采摘点定位

Chengyuan Song, Chao Wang, Jian-ying Song
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引用次数: 0

摘要

传统的番茄检测方法图像分割复杂,容易被枝叶、果实重叠等原因遮挡,影响果实的检测精度和采摘点的准确定位。提出了一种基于YOLOv5网络的番茄快速识别定位方法。该方法通过使用单个卷积神经网络遍历整个图像来执行端到端检测,返回对象的类和位置。在YOLOv5的基础上,对回归盒损失函数进行修正,提高番茄果实的检测效果,并将YOLOv5检测到的果实边界矩形中心点作为番茄采摘的中心点。实验结果表明,该方法的平均定位误差为1.379%,比传统的霍夫方法降低了1.867个百分点。YOLOv5方法能有效识别自然环境下的番茄果实。它可以在重叠、小目标、未成熟等场景中有效检测西红柿,并进行更精确的定位,为西红柿采摘机器人选择最佳采摘点奠定基础。
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Tomato identification and picking point location based on YOLOv5
The traditional tomato detection method of image segmentation is complex, and it is easy to be blocked by branches and leaves, fruit overlapping and other reasons, which affect the detection accuracy of fruit and the accurate positioning of picking points. This study proposes a fast identification and localization method of tomato based on YOLOv5 network. This method performs end-to-end detection by traversing the entire image with a single convolutional neural network, returning the class and location of the object. On the basis of YOLOv5, the regression box loss function is modified to improve the detection effect of tomato fruit, and the center point of the fruit boundary rectangle detected by YOLOv5 is used as the center point of tomato picking. The experimental results show that the average localization error of the proposed method is 1.379%, which is 1.867% lower than the traditional Hough method. The YOLOv5 method can effectively identify tomato fruits in natural environment. It can effectively detect tomatoes in overlapping, small targets, immature and other scenes, and perform more accurate positioning, laying a foundation for the tomato picking robot to select the best picking point.
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