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Forestry Scene Geometry Estimation Via Statistical Learning

机译:林业现场几何估计通过统计学习

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In the context of a forest inventory application, given preprocessing of the 2D airborne images of a forest plot, we focus on estimating the parameters which control the 3D geometry of trees, in order to generate a virtual forest. The major contribution of this paper lies in the proposed probabilistic graphical model and the novel sampling scheme for solving this data fusion problem. To deal with the variability introduced from both the image data and the preprocessing procedures, we adopt a Jump-Diffusion Markov Chain Monte Carlo sampling paradigm to traverse the possible state spaces. Within each state space, a stochastic version of the Expectation Maximization algorithm is employed to explore the plausible parameters and latent scene geometry by finding the local maxima. Therefore, the propose algorithm estimates the number of trees and the associated parameters, and also infer the 3D scene geometry that is consistent with the preprocessed data and the expert prior knowledge. Experiments on both synthetic and real forestry data show promising results.
机译:在森林库存应用程序的上下文中,考虑到森林图的2D空中图像的预处理,我们专注于估计控制树3D几何形状的参数,以便生成虚拟林。本文的主要贡献在于提出的概率图形模型和用于解决此数据融合问题的新型采样方案。为了处理从图像数据和预处理程序引入的可变性,我们采用了跳跃扩散马尔可夫链Monte Carlo采样范例来遍历可能的状态空间。在每个状态空间内,采用期望最大化算法的随机版本来探索局部最大值来探索合理的参数和潜在场景几何。因此,提议算法估计树木和相关参数的数量,并且还推断与预处理数据和专家先前知识一致的3D场景几何。合成和真正林业数据的实验表明了有希望的结果。

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