YOLOv5s-Cherry:基于改进YOLOv5s算法的密集场景樱桃目标检测

Rong-Li Gai, Mengke Li, Zu-Min Wang, Lingyan Hu, Xiaomei Li
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引用次数: 1

摘要

智慧农业已成为未来农业的发展趋势,具有广泛的研究和应用场景。利用机器学习为人们完成基本任务已经成为现实,而这种能力也在机器视觉中得到了应用。为了节省水果采摘过程中的时间,降低人工成本,采用机器人在果园环境中实现自动采摘。提出了基于深度学习的樱桃目标检测算法来识别和采摘樱桃。然而,现有的方法大多针对相对稀疏的水果,无法解决小而密的水果检测问题。本文提出了一种基于YOLOv5s的樱桃检测模型。首先,将原始网络模型的BackBone层两次向下采样的特征映射卷积到第二和第三个CSP模块的输入端,增强浅层特征信息;此外,在特征提取阶段调整CSP模块深度,增加RFB模块,增强特征提取能力。最后,采用软-非最大抑制(Soft-Non-Maximum Suppression,简称nms),最大限度地减少遮挡造成的目标损失。我们对模型的性能进行了测试,结果表明改进的YOLOv5s-cherry模型对于小而密的樱桃检测具有最佳的检测性能,有利于智能采摘。
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YOLOv5s-Cherry: Cherry Target Detection in Dense Scenes Based on Improved YOLOv5s Algorithm
Intelligent agriculture has become the development trend of agriculture in the future, and it has a wide range of research and application scenarios. Using machine learning to complete basic tasks for people has become a reality, and this ability is also used in machine vision. In order to save the time in the fruit picking process and reduce the cost of labor, the robot is used to achieve the automatic picking in the orchard environment. Cherry target detection algorithms based on deep learning are proposed to identify and pick cherries. However, most of the existing methods are aimed at relatively sparse fruits and cannot solve the detection problem of small and dense fruits. In this paper, we propose a cherry detection model based on YOLOv5s. First, the shallow feature information is enhanced by convolving the feature maps sampled by two times down in BackBone layer of the original network model to the input end of the second and third CSP modules. In addition, the depth of CSP module is adjusted and RFB module is added in feature extraction stage to enhance feature extraction capability. Finally, Soft-Non-Maximum Suppression (Soft-NMS) is used to minimize the target loss caused by occlusion. We test the performance of the model, and the results show that the improved YOLOv5s-cherry model has the best detection performance for small and dense cherry detection, which is conducive to intelligent picking.
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