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Compression and Recovery of 3D Broad-Leaved Tree Point Clouds Based on Compressed Sensing

机译:基于压缩传感的三维阔叶树点云压缩和恢复

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摘要

The terrestrial laser scanner (TLS) has been widely used in forest inventories. However, with increasing precision of TLS, storing and transmitting tree point clouds become more challenging. In this paper, a novel compressed sensing (CS) scheme for broad-leaved tree point clouds is proposed by analyzing and comparing different sparse bases, observation matrices, and reconstruction algorithms. Our scheme starts by eliminating outliers and simplifying point clouds with statistical filtering and voxel filtering. The scheme then applies Haar sparse basis to thin the coordinate data based on the characteristics of the broad-leaved tree point clouds. An observation procedure down-samples the point clouds with the partial Fourier matrix. The regularized orthogonal matching pursuit algorithm (ROMP) finally reconstructs the original point clouds. The experimental results illustrate that the proposed scheme can preserve morphological attributes of the broad-leaved tree within a range of relative error: 0.0010%−3.3937%, and robustly extend to plot-level within a range of mean square error (MSE): 0.0063−0.2245.
机译:地面激光扫描仪(TLS)已广泛用于森林库存。然而,随着TLS的升高,存储和传输树点云变得更具挑战性。本文通过分析和比较不同的稀疏基础,观察矩阵和重建算法,提出了一种用于阔叶树点云的新型压缩感测(CS)方案。我们的方案通过消除异常值来开始具有统计滤波和体素滤波的尖云。然后,该方案将哈尔稀疏基于宽带树点云的特性来缩小坐标数据。观察程序用部分傅立叶矩阵对点云进行下来。正则化正交匹配追踪算法(ROMP)最终重建了原始点云。实验结果表明,所提出的方案可以在相对误差范围内保持阔叶树的形态属性:0.0010%-3.3937%,稳健地延伸到平均方误差(MSE)范围内的绘图水平:0.0063 -0.2245。

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