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基于多器官特征融合的枣品种识别方法
引用本文:许楠,苑迎春,雷浩,孟惜,何振学. 基于多器官特征融合的枣品种识别方法[J]. 农业机械学报, 2024, 55(4): 213-220,240
作者姓名:许楠  苑迎春  雷浩  孟惜  何振学
作者单位:河北农业大学;石家庄学院
基金项目:国家自然科学基金项目(62102130)和河北省自然科学基金项目(F2020204003)
摘    要:针对自然场景下的枣品种识别问题,以枣果为研究对象的机器视觉技术已成为枣品种精准识别的主流方法之一。针对枣品种存在类间差异小、类内差异大的问题,提出了一种基于多器官特征融合的枣品种识别方法。首先利用YOLO v3检测算法将采集的自然场景图像中的枣果和叶片器官分割提取,提出了基于笛卡尔乘积构建两器官组合对的枣品种多样本数据集,然后基于EfficientNetV2网络模型,设计了能够充分学习两器官特征相关性的融合策略来提升模型性能,引入了逐步迁移训练方式以提升枣品种识别效率。最后,在构建的包含20个枣品种数据集上进行了大量实验,得到97.04%的识别准确率,明显优于现有研究结果,并且在训练时间和收敛速度上,本方法也有一定提升。结果表明该方法能够有效融合枣品种枣果和叶片器官的特征信息,可为其他品种识别研究提供参考。

关 键 词:枣品种识别  笛卡尔乘积  特征融合  迁移学习  YOLO v3
收稿时间:2023-08-25

Jujube Variety Recognition Method Based on Multi-organ Feature Fusion
XU Nan,YUAN Yingchun,LEI Hao,MENG Xi,HE Zhenxue. Jujube Variety Recognition Method Based on Multi-organ Feature Fusion[J]. Transactions of the Chinese Society for Agricultural Machinery, 2024, 55(4): 213-220,240
Authors:XU Nan  YUAN Yingchun  LEI Hao  MENG Xi  HE Zhenxue
Affiliation:Hebei Agricultural University;Shijiazhuang University
Abstract:Aiming at the problem of jujube variety identification in natural scenes, machine vision technology with jujube fruit as the research object has become one of the mainstream methods for accurate identification of jujube varieties. However, due to the small inter-class difference and large intra-class difference of jujube varieties, it is difficult for a single organ to fully express the different characteristics of jujube varieties. A method of jujube varieties recognition based on multi-organ feature fusion was proposed. Firstly, the YOLO v3 detection algorithm was used to segment and extract the jujube fruit and leaf organs in the collected natural scene images, and a multi-sample dataset of jujube varieties based on Cartesian product was proposed to construct two organ combination pairs, and then based on the EfficientNetV2 network model, a fusion strategy that can fully learn the correlation between the characteristics of the two organs was designed to improve the model performance, and a stepwise transfer training method was introduced to improve the recognition efficiency of jujube varieties. Finally, a large number of experiments were carried out on the constructed dataset containing 20 jujube varieties, and the recognition accuracy of 97.04% was obtained, which was significantly better than that of the existing research results, and the training time and convergence speed of the proposed method were also improved. The results showed that this method can effectively integrate the characteristic information of jujube fruit and leaf organs of jujube cultivars, which can provide valuable reference for other variety identification research.
Keywords:jujube variety recognition  Cartesian product  feature fusion  transfer learning  YOLO v3
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