Efficient Identification and Classification of Pear Varieties Based on Leaf Appearance with YOLOv10 Model

文献类型: 外文期刊

第一作者: Li, Niman

作者: Li, Niman;Wu, Yongqing;Jiang, Zhengyu;Li, Niman;Mou, Yulu;Ji, Xiaohao;Huo, Hongliang;Dong, Xingguang;Li, Niman;Mou, Yulu;Ji, Xiaohao;Huo, Hongliang;Dong, Xingguang

作者机构:

关键词: identification; classification; pear; leaves; YOLOv10

期刊名称:HORTICULTURAE ( 影响因子:3.0; 五年影响因子:3.2 )

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年卷期: 2025 年 11 卷 5 期

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收录情况: SCI

摘要: The accurate and efficient identification of pear varieties is paramount to the intelligent advancement of the pear industry. This study introduces a novel approach to classifying pear varieties by recognizing their leaves. We collected leaf images of 33 pear varieties against natural backgrounds, including 5 main cultivation species and inter-species selection varieties. Images were collected at different times of the day to cover changes in natural lighting and ensure model robustness. From these, a representative dataset containing 17,656 pear leaf images was self-made. YOLOv10 based on the PyTorch framework was applied to train the leaf dataset, and construct a pear leaf identification and classification model. The efficacy of the YOLOv10 method was validated by assessing important metrics such as precision, recall, F1-score, and mAP value, which yielded results of 99.6%, 99.4%, 0.99, and 99.5%, respectively. Among them, the precision rate of nine varieties reached 100%. Compared with existing recognition networks and target detection algorithms such as YOLOv7, ResNet50, VGG16, and Swin Transformer, YOLOv10 performs the best in pear leaf recognition in natural scenes. To address the issue of low recognition precision in Yuluxiang, the Spatial and Channel reconstruction Convolution (SCConv) module is introduced on the basis of YOLOv10 to improve the model. The result shows that the model precision can reach 99.71%, and Yuluxiang's recognition and classification precision increased from 96.4% to 98.3%. Consequently, the model established in this study can realize automatic recognition and detection of pear varieties, and has room for improvement, providing a reference for the conservation, utilization, and classification research of pear resources, as well as for the identification of other varietal identification of other crops.

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