Matsumoto Soushi, Utsumi Yuzuko, Kozuka Toshiaki, Iwamura Masakazu, Nakai Tomonori, Yamauchi Daisuke, Karahara Ichirou, Mineyuki Yoshinobu, Hoshino Masato, Uesugi Kentaro, Kise Koichi
Graduate School of Informatics, Osaka Metropolitan University, Sakai, Japan.
Institute of Science and Engineering, Kanazawa University, Kanazawa, Japan.
Front Plant Sci. 2024 Jul 29;15:1374937. doi: 10.3389/fpls.2024.1374937. eCollection 2024.
To study plant organs, it is necessary to investigate the three-dimensional (3D) structures of plants. In recent years, non-destructive measurements through computed tomography (CT) have been used to understand the 3D structures of plants. In this study, we use the capitulum inflorescence as an example and focus on contact points between the receptacles and florets within the 3D capitulum inflorescence bud structure to investigate the 3D arrangement of the florets on the receptacle. To determine the 3D order of the contact points, we constructed slice images from the CT volume data and detected the receptacles and florets in the image. However, because each CT sample comprises hundreds of slice images to be processed and each capitulum inflorescence comprises several florets, manually detecting the receptacles and florets is labor-intensive. Therefore, we propose an automatic contact point detection method based on CT slice images using image recognition techniques. The proposed method improves the accuracy of contact point detection using prior knowledge that contact points exist only around the receptacle. In addition, the integration of the detection results enables the estimation of the 3D position of the contact points. According to the experimental results, we confirmed that the proposed method can detect contacts on slice images with high accuracy and estimate their 3D positions through clustering. Additionally, the sample-independent experiments showed that the proposed method achieved the same detection accuracy as sample-dependent experiments.
为了研究植物器官,有必要研究植物的三维(3D)结构。近年来,通过计算机断层扫描(CT)进行的无损测量已被用于了解植物的3D结构。在本研究中,我们以头状花序为例,聚焦于3D头状花序芽结构中花托与小花之间的接触点,以研究小花在花托上的3D排列。为了确定接触点的3D顺序,我们从CT体积数据构建切片图像,并在图像中检测花托和小花。然而,由于每个CT样本包含数百张待处理的切片图像,且每个头状花序包含多个小花,手动检测花托和小花非常耗费人力。因此,我们提出了一种基于CT切片图像的自动接触点检测方法,该方法使用图像识别技术。所提出的方法利用接触点仅存在于花托周围的先验知识提高了接触点检测的准确性。此外,检测结果的整合能够估计接触点的3D位置。根据实验结果,我们证实了所提出的方法能够高精度地检测切片图像上的接触点,并通过聚类估计其3D位置。此外,与样本无关的实验表明,所提出的方法与依赖样本的实验具有相同的检测精度。