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Fruit Detection and Segmentation for Apple Harvesting Using Visual Sensor in Orchards

机译:果园中使用视觉传感器进行苹果收获的水果检测和细分

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摘要

Autonomous harvesting shows a promising prospect in the future development of the agriculture industry, while the vision system is one of the most challenging components in the autonomous harvesting technologies. This work proposes a multi-function network to perform the real-time detection and semantic segmentation of apples and branches in orchard environments by using the visual sensor. The developed detection and segmentation network utilises the atrous spatial pyramid pooling and the gate feature pyramid network to enhance feature extraction ability of the network. To improve the real-time computation performance of the network model, a lightweight backbone network based on the residual network architecture is developed. From the experimental results, the detection and segmentation network with ResNet-101 backbone outperformed on the detection and segmentation tasks, achieving an score of 0.832 on the detection of apples and 87.6% and 77.2% on the semantic segmentation of apples and branches, respectively. The network model with lightweight backbone showed the best computation efficiency in the results. It achieved an score of 0.827 on the detection of apples and 86.5% and 75.7% on the segmentation of apples and branches, respectively. The weights size and computation time of the network model with lightweight backbone were 12.8 M and 32 ms, respectively. The experimental results show that the detection and segmentation network can effectively perform the real-time detection and segmentation of apples and branches in orchards.
机译:自主收获在农业工业的未来发展中显示出广阔的前景,而视觉系统是自主收获技术中最具挑战性的组成部分之一。这项工作提出了一个多功能网络,通过使用视觉传感器对果园环境中的苹果和树枝进行实时检测和语义分割。发达的检测和分割网络利用无空间金字塔网络和门特征金字塔网络来增强网络的特征提取能力。为了提高网络模型的实时计算性能,开发了一种基于剩余网络架构的轻量级骨干网络。从实验结果来看,使用ResNet-101骨干的检测和分割网络在检测和分割任务上的表现要好,分别在苹果的检测上达到0.832的得分,在苹果和分支的语义分割上分别达到87.6%和77.2%的得分。具有轻量级骨干的网络模型在结果中显示出最佳的计算效率。在检测苹果上,它的得分分别为0.827,在分割苹果和树枝上的得分分别为86.5%和75.7%。具有轻量级骨干的网络模型的权重大小和计算时间分别为12.8 M和32 ms。实验结果表明,该检测与分割网络可以有效地进行果园苹果和树枝的实时检测与分割。

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