Xu Shan, Shen Jia, Wei Yuzhen, Li Yu, He Yong, Hu Hui, Feng Xuping
College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou, 310058, China.
Institute of Vegetables, Zhejiang Academy of Agricultural Sciences, Hangzhou, 310021, China.
Plant Methods. 2024 Oct 30;20(1):166. doi: 10.1186/s13007-024-01293-1.
Cucumis melo L., commonly known as melon, is a crucial horticultural crop. The selection and breeding of superior melon germplasm resources play a pivotal role in enhancing its marketability. However, current methods for melon appearance phenotypic analysis rely primarily on expert judgment and intricate manual measurements, which are not only inefficient but also costly. Therefore, to expedite the breeding process of melon, we analyzed the images of 117 melon varieties from two annual years utilizing artificial intelligence (AI) technology. By integrating the semantic segmentation model Dual Attention Network (DANet), the object detection model RTMDet, the keypoint detection model RTMPose, and the Mobile-Friendly Segment Anything Model (MobileSAM), a deep learning algorithm framework was constructed, capable of efficiently and accurately segmenting melon fruit and pedicel. On this basis, a series of feature extraction algorithms were designed, successfully obtaining 11 phenotypic traits of melon. Linear fitting verification results of selected traits demonstrated a high correlation between the algorithm-predicted values and manually measured true values, thereby validating the feasibility and accuracy of the algorithm. Moreover, cluster analysis using all traits revealed a high consistency between the classification results and genotypes. Finally, a user-friendly software was developed to achieve rapid and automatic acquisition of melon phenotypes, providing an efficient and robust tool for melon breeding, as well as facilitating in-depth research into the correlation between melon genotypes and phenotypes.
甜瓜(Cucumis melo L.),通常被称为瓜,是一种重要的园艺作物。优良甜瓜种质资源的选育对提高其市场竞争力起着关键作用。然而,目前甜瓜外观表型分析方法主要依赖专家判断和复杂的人工测量,不仅效率低下,而且成本高昂。因此,为了加快甜瓜的育种进程,我们利用人工智能(AI)技术分析了两个年度的117个甜瓜品种的图像。通过整合语义分割模型双注意力网络(DANet)、目标检测模型RTMDet、关键点检测模型RTMPose和移动友好的分割一切模型(MobileSAM),构建了一个深度学习算法框架,能够高效、准确地分割甜瓜果实和果梗。在此基础上,设计了一系列特征提取算法,成功获得了11个甜瓜表型性状。所选性状的线性拟合验证结果表明,算法预测值与人工测量真值之间具有高度相关性,从而验证了算法的可行性和准确性。此外,使用所有性状进行聚类分析表明,分类结果与基因型之间具有高度一致性。最后,开发了一款用户友好的软件,以实现甜瓜表型的快速自动获取,为甜瓜育种提供了一个高效、强大的工具,同时也便于深入研究甜瓜基因型与表型之间的相关性。