Abstract
Skeleton extraction from 3D plant point cloud data is an essential prior for myriads of phenotyping studies. Although skeleton extraction from 3D shapes have been studied extensively in the computer vision and graphics literature, handling the case of plants is still an open problem. Drawbacks of the existing approaches include the zigzag structure of the skeleton, nonuniform density of skeleton points, lack of points in the areas having complex geometry structure, and most importantly the lack of biological relevance. With the aim to improve existing skeleton structures of state-of-the-art, we propose a stochastic framework which is supported by the biological structure of the original plant (we consider plants without any leaves). Initially we estimate the branching structure of the plant by the notion of β-splines to form a curve tree defined as a finite set of curves joined in a tree topology with certain level of smoothness. In the next phase, we force the discrete points in the curve tree to move toward the original point cloud by treating each point in the curve tree as a center of Gaussian, and points in the input cloud data as observations from the Gaussians. The task is to find the correct locations of the Gaussian centroids by maximizing a likelihood. The optimization technique is iterative and is based on the Expectation Maximization (EM) algorithm. The E-step estimates which Gaussian the observed point cloud was sampled from, and the M-step maximizes the negative log-likelihood that the observed points were sampled from the Gaussian Mixture Model (GMM) with respect to the model parameters. We experiment with several real world and synthetic datasets and demonstrate the robustness of the approach over the state-of-the-art.
Highlights
Automated analysis of phenotyping traits of plants using imaging techniques are becoming off-the-shelf tool for botanical analyses these days (Spalding and Miller, 2013; Tardieu et al, 2017)
Cubic B-splines are widely used in modeling curves, we model the branch curves as β-splines, which provide an intermediate representation between approximation and interpolation and captures the local
We have proposed a technique to improve an existing skeleton by a stochastic optimization technique
Summary
Automated analysis of phenotyping traits of plants using imaging techniques are becoming off-the-shelf tool for botanical analyses these days (Spalding and Miller, 2013; Tardieu et al, 2017). 3D point cloud based analysis is getting extremely popular in phenotyping and agricultural applications (Vázquez-Arellano et al, 2016). Typical applications of point cloud based phenotyping include plant organ segmentation (Ziamtsov and Navlakha, 2019), Skeletonization robotic branch pruning (Chattopadhyay et al, 2016), automated growth analysis (Chaudhury et al, 2019), etc. Many of these applications require skeleton structure of the input point cloud data as a prior for further processing. That is why skeletons are widely used for varieties of shape analysis tasks in different application areas (Cornea et al, 2007)
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