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结合二维和三维方法的三维叶缘重建

Three-Dimensional Leaf Edge Reconstruction Combining Two- and Three-Dimensional Approaches.

作者信息

Murata Hidekazu, Noshita Koji

机构信息

Department of Biology, Kyushu University, Fukuoka, Fukuoka 819-0395, Japan.

Plant Frontier Research Center, Kyushu University, Fukuoka, Fukuoka 819-0395, Japan.

出版信息

Plant Phenomics. 2024 May 9;6:0181. doi: 10.34133/plantphenomics.0181. eCollection 2024.

Abstract

Leaves, crucial for plant physiology, exhibit various morphological traits that meet diverse functional needs. Traditional leaf morphology quantification, largely 2-dimensional (2D), has not fully captured the 3-dimensional (3D) aspects of leaf function. Despite improvements in 3D data acquisition, accurately depicting leaf morphologies, particularly at the edges, is difficult. This study proposes a method for 3D leaf edge reconstruction, combining 2D image segmentation with curve-based 3D reconstruction. Utilizing deep-learning-based instance segmentation for 2D edge detection, structure from motion for estimation of camera positions and orientations, leaf correspondence identification for matching leaves among images, and curve-based 3D reconstruction for estimating 3D curve fragments, the method assembles 3D curve fragments into a leaf edge model through B-spline curve fitting. The method's performances were evaluated on both virtual and actual leaves, and the results indicated that small leaves and high camera noise pose greater challenges to reconstruction. We developed guidelines for setting a reliability threshold for curve fragments, considering factors occlusion, leaf size, the number of images, and camera error; the number of images had a lesser impact on this threshold compared to others. The method was effective for lobed leaves and leaves with fewer than 4 holes. However, challenges still existed when dealing with morphologies exhibiting highly local variations, such as serrations. This nondestructive approach to 3D leaf edge reconstruction marks an advancement in the quantitative analysis of plant morphology. It is a promising way to capture whole-plant architecture by combining 2D and 3D phenotyping approaches adapted to the target anatomical structures.

摘要

叶子对于植物生理学至关重要,展现出各种形态特征以满足不同的功能需求。传统的叶子形态量化主要是二维(2D)的,尚未充分捕捉到叶子功能的三维(3D)方面。尽管3D数据采集有所改进,但准确描绘叶子形态,尤其是边缘部分,仍然困难。本研究提出了一种3D叶子边缘重建方法,将2D图像分割与基于曲线的3D重建相结合。该方法利用基于深度学习的实例分割进行2D边缘检测,利用运动结构估计相机位置和方向,通过叶子对应识别在图像间匹配叶子,并利用基于曲线的3D重建估计3D曲线片段,然后通过B样条曲线拟合将3D曲线片段组装成叶子边缘模型。该方法在虚拟叶子和实际叶子上均进行了性能评估,结果表明小叶和高相机噪声对重建构成更大挑战。我们制定了考虑遮挡、叶子大小、图像数量和相机误差等因素的曲线片段可靠性阈值设置指南;与其他因素相比,图像数量对该阈值的影响较小。该方法对浅裂叶和少于4个孔洞的叶子有效。然而,在处理具有高度局部变化的形态(如锯齿)时仍然存在挑战。这种3D叶子边缘重建的非破坏性方法标志着植物形态定量分析的进步。通过结合适用于目标解剖结构的2D和3D表型分析方法,这是一种捕捉整株植物结构的有前途的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b523/11079596/504b3b714345/plantphenomics.0181.fig.001.jpg

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