Interpolating and denoising point cloud data for computationally efficient environment modeling

M. A. Selver, E. Y. Zoral, B. Belenlioglu, Yasin Soyaslan
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引用次数: 2

Abstract

Light detection and ranging (LIDAR) is an important component of autonomous vehicles for environment modeling in real time. LIDAR generates a point cloud by analyzing the echo of light pulses scattered from the objects surrounding the train. Since the generated point clouds are too large to be used in practical applications, they need to be converted to a simpler and more compact form, while preserving all of the important features of the environment. Moreover, LIDAR signals are often affected by various noises or interferences, which rapidly decrease the signal-to-noise ratio of the signal with increasing distance. This study proposes a multi-scale analysis (MSA) strategy for interpolation and denoising of LIDAR signals efficiently. The developed method uses a coarse-to-fine hierarchical approximation that incrementally fits LIDAR signals up to a desired degree of accuracy. It is shown on three different signal types that the local analysis of the proposed method can eliminate noise more effectively than filtering and radial basis function based reconstruction of a signal provides computational efficiency compared to wavelet decomposition.
插值和去噪点云数据的计算效率的环境建模
光探测与测距(LIDAR)是自动驾驶汽车实时环境建模的重要组成部分。激光雷达通过分析火车周围物体散射的光脉冲回波,生成点云。由于生成的点云太大,无法在实际应用中使用,因此需要将它们转换为更简单、更紧凑的形式,同时保留环境的所有重要特征。此外,激光雷达信号经常受到各种噪声或干扰的影响,随着距离的增加,信号的信噪比迅速降低。本研究提出了一种多尺度分析(MSA)策略,可有效地对激光雷达信号进行插值和去噪。所开发的方法使用从粗到精的分层近似,逐步拟合LIDAR信号,达到所需的精度程度。在三种不同的信号类型上表明,该方法的局部分析比滤波更有效地消除了噪声,而基于径向基函数的信号重构与小波分解相比具有更高的计算效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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