Chu Pengyu, Han Bo, Guo Qiang, Wan Yiping, Zhang Jingjing
College of Computer and Information Engineering, Xinjiang Agricultural University, Urumqi 830052, China.
Engineering Research Center of Intelligent Agriculture Ministry of Education, Urumqi 830052, China.
Plants (Basel). 2025 May 22;14(11):1578. doi: 10.3390/plants14111578.
Phenotypic data of cotton can accurately reflect the physiological status of plants and their adaptability to environmental conditions, playing a significant role in the screening of germplasm resources and genetic improvement. Therefore, this study proposes a cotton phenotypic data extraction algorithm that integrates ResDGCNN with an improved region-growing method and constructs a 3D point cloud dataset of cotton covering the entire growth period under real growth conditions. To address the challenge of significant structural variations in cotton organs across different growth stages, we designed an innovative point cloud segmentation algorithm, ResDGCNN, which integrates residual learning with dynamic graph convolution to enhance organ segmentation performance throughout all developmental stages. In addition, to address the challenge of accurately segmenting overlapping regions between different cotton organs, we introduced an optimization strategy that combines point distance mapping with curvature-based normal vectors and developed an improved region-growing algorithm to achieve fine segmentation of multiple cotton organs, including leaves, stems, and flower buds. Experimental data show that, in the task of organ segmentation throughout the entire cotton growth cycle, the ResDGCNN model achieved a segmentation accuracy of 67.55%, with a 4.86% improvement in mIoU compared to the baseline model. In the fine-grained segmentation of overlapping leaves, the model achieved an R of 0.962 and an RMSE of 2.0. The average relative error in stem length estimation was 0.973, providing a reliable solution for acquiring 3D phenotypic data of cotton.
棉花的表型数据能够准确反映植株的生理状态及其对环境条件的适应性,在种质资源筛选和遗传改良中发挥着重要作用。因此,本研究提出了一种将ResDGCNN与改进的区域生长方法相结合的棉花表型数据提取算法,并构建了真实生长条件下覆盖棉花整个生育期的三维点云数据集。为应对棉花器官在不同生长阶段存在显著结构差异的挑战,我们设计了一种创新的点云分割算法ResDGCNN,该算法将残差学习与动态图卷积相结合,以提高各个发育阶段的器官分割性能。此外,为应对准确分割不同棉花器官之间重叠区域的挑战,我们引入了一种将点距离映射与基于曲率的法向量相结合的优化策略,并开发了一种改进的区域生长算法,以实现对包括叶片、茎和花蕾在内的多个棉花器官的精细分割。实验数据表明,在整个棉花生长周期的器官分割任务中,ResDGCNN模型的分割准确率达到67.55%,与基线模型相比,平均交并比提高了4.86%。在重叠叶片的细粒度分割中,该模型的R值为0.962,均方根误差为2.0。茎长估计的平均相对误差为0.973,为获取棉花三维表型数据提供了可靠的解决方案。