Immature Apple Detection Method Based on Improved Yolov3

Zhongqiang Huang, Ping Zhang, Ruigang Liu, Dong-Xu Li
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引用次数: 25

Abstract

The identification of immature apples is a key technical link to realize automatic real-time monitoring of orchards, expert decision-making, and realization of orchard output prediction. In the orchard scene, the reflection caused by light and the color of immature apples are highly similar to the leaves, especially the obscuration and overlap of fruits by leaves and branches, which brings great challenges to the detection of immature apples. This paper proposes an improved YOLOv3 detection method for immature apples in the orchard scene. Use CSPDarknet53 as the backbone network of the model, introduce the CIOU target frame regression mechanism, and combine with the Mosaic algorithm to improve the detection accuracy. For the data set with severely occluded fruits, the F1 and mAP of the immature apple recognition model proposed in this article are 0.652 and 0.675, respectively. The inference speed for a single 416×416 picture is 12 ms, the detection speed can reach 83 frames/s on 1080ti, and the inference speed is 8.6 ms. Therefore, for the severely occluded immature apple data set, the method proposed in this article has a significant detection effect, and provides a feasible solution for the automation and mechanization of the apple industry.
基于改进Yolov3的未成熟苹果检测方法
未熟苹果的识别是实现果园自动实时监控、专家决策、实现果园产量预测的关键技术环节。在果园场景中,未成熟苹果的光线反射和颜色与树叶高度相似,尤其是树叶和树枝对果实的遮挡和重叠,给未成熟苹果的检测带来了很大的挑战。本文提出了一种改进的YOLOv3对果园场景中未成熟苹果的检测方法。采用CSPDarknet53作为模型的骨干网,引入CIOU目标帧回归机制,并结合马赛克算法提高检测精度。对于果实严重遮挡的数据集,本文提出的未成熟苹果识别模型的F1和mAP分别为0.652和0.675。单张416×416图片的推理速度为12 ms,在1080ti上检测速度可达83帧/秒,推理速度为8.6 ms。因此,对于严重遮挡的未成熟苹果数据集,本文提出的方法具有显著的检测效果,为苹果产业的自动化、机械化提供了可行的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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