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A Visual System of Citrus Picking Robot Using Convolutional Neural Networks

机译:卷积神经网络的柑橘采摘机器人视觉系统

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To realize automatic fruit harvesting, there have been a lot of approaches of engineering since 1960s. However, for the complex natural environment, the study of robotic harvesting systems is still on the developing. In this paper, we propose to use several deep learning methods, which are the-state-of-the-art techniques of pattern recognition, to raise the accuracy of the citrus discrimination by visual sensors. The proposed methods include YOLOv3, ResNet50, and ResNet152, which are the advanced deep convolutional neural networks (CNNs). For the powerful ability of pattern recognition of these CNNS, the proposed visual system is able to distinguish not only citrus fruits but also leaves, branches, and fruits occluded by branch or leaves, and these functions are important for picking work of harvesting robot in the real environment. The recognition abilities of the three CNNs were confirmed by the experiment results, and ResNet152 showed the highest recognition rate. The recognition accuracy of the normal citrus in the natural environment was 95.35%, overlapped citrus fruits reached 97.86%, and 85.12% in the cases of leaves and branches of citrus trees.
机译:为了实现水果自动收获,自1960年代以来,已经有许多工程方法。然而,对于复杂的自然环境,机器人收割系统的研究仍在发展中。在本文中,我们建议使用几种深度学习方法(它们是模式识别的最新技术)来提高视觉传感器对柑橘的识别的准确性。所提出的方法包括YOLOv3,ResNet50和ResNet152,它们是高级的深度卷积神经网络(CNN)。由于这些CNNS具有强大的模式识别能力,因此所提出的视觉系统不仅能够区分柑橘类水果,而且还能够区分叶片,树枝和被树枝或树叶遮挡的水果,这些功能对于在采摘机器人中进行采摘机器人的工作非常重要。真实的环境。实验结果证实了三个CNN的识别能力,ResNet152的识别率最高。在自然环境中,普通柑橘的识别准确度为95.35%,重叠的柑橘类水果的识别准确率为97.86%,在柑橘树的叶子和树枝的情况下为85.12%。

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