首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >INDIVIDUAL TREE SPECIES CLASSIFICATION BASED ON TERRESTRIAL LASER SCANNING USING CURVATURE ESTIMATION AND CONVOLUTIONAL NEURAL NETWORK
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INDIVIDUAL TREE SPECIES CLASSIFICATION BASED ON TERRESTRIAL LASER SCANNING USING CURVATURE ESTIMATION AND CONVOLUTIONAL NEURAL NETWORK

机译:基于曲率估计和卷积神经网络的陆地激光扫描个体树种分类

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In this paper, we propose a new method for specifying individual tree species based on depth and curvature image creation from point cloud captured by terrestrial laser scanner and Convolutional Neural Network (CNN). Given a point cloud of an individual tree, the proposed method first extracts the subset of points corresponding to a trunk at breast-height. Then branches and leaves are removed from the extracted points by RANSAC -based circle fitting, and the depth image is created by globally fitting a cubic polynomial surface to the remaining trunk points. Furthermore, principal curvatures are estimated at each scanned point by locally fitting a quadratic surface to its neighbouring points. Depth images clearly capture the bark texture involved by its split and tear-off, but its computation is unstable and may fail to acquire bark shape in the resulting images. In contrast, curvature estimation enables stable computation of surface concavity and convexity, and thus it can well represent local geometry of bark texture in the curvature images. In comparison to the depth image, the curvature image enables accurate classification for slanted trees with many branches and leaves. We also evaluated the effectiveness of a multi-modal approach for species classification in which depth and curvature images are analysed together using CNN and support vector machine. We verified the superior performance of our proposed method for point cloud of Japanese cedar and cypress trees.
机译:在本文中,我们提出了一种新的方法,该方法用于根据地面激光扫描仪和卷积神经网络(CNN)捕获的点云中的深度和曲率图像创建来指定单个树种。给定一棵单独的树的点云,所提出的方法首先提取对应于胸高的树干的点的子集。然后,通过基于RANSAC的圆拟合从提取的点中除去树枝和树叶,并通过将三次多项式曲面全局拟合到其余主干点来创建深度图像。此外,通过将二次曲面局部拟合到其相邻点来估计每个扫描点的主曲率。深度图像清楚地捕获了其分裂和撕裂所涉及的树皮纹理,但是其计算不稳定,并且可能无法在生成的图像中获取树皮形状。相反,曲率估计能够稳定地计算表面的凹凸,因此可以很好地表示曲率图像中树皮纹理的局部几何形状。与深度图像相比,曲率图像可以对具有许多分支和叶子的倾斜树木进行精确分类。我们还评估了使用多模式方法进行物种分类的有效性,其中使用CNN和支持向量机一起分析了深度和曲率图像。我们验证了我们提出的方法对于日本雪松和柏树的点云的优越性能。

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