Research on object detection for small objects in agriculture: taking red bayberry as an example

Shan Hua, Kaiyuan Han, Shuangwei Li, Minjie Xu, Shouyan Zhu, Zhifu Xu
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Abstract

With the continuous improvement of intelligent management level in red bayberry orchards, the demand for automatic picking and automatic sorting is becoming increasingly apparent. The prerequisite for achieving these automated processes is to quickly identify the maturity of red bayberries by object detection. In this study, we classified red bayberry into 8 levels of maturity and achieved an object detection precision of 88.9%. We used a fast object detection model, combined with small object optimization methods and small feature extraction layers to get higher precision.
农业小物体检测研究:以红杨梅为例
随着红杨梅果园智能化管理水平的不断提高,对自动采摘和自动分拣的需求日益明显。实现这些自动化流程的前提是通过物体检测快速识别红杨梅的成熟度。在这项研究中,我们将红杨梅分为 8 个成熟度等级,物体检测精度达到 88.9%。我们使用了快速物体检测模型,并结合小物体优化方法和小特征提取层来获得更高的精度。
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