Mobile laser scanning (MLS), which can quickly collect a high-resolution and high-precision point cloud of the surroundings of a vehicle, is an appealing technology for three-dimensional (3D) urban scene analysis. In this regard, the classification of MLS point clouds is a common and core task. We focus on pointwise classification, in which each individual point is categorized into a specific class by applying a binary classifier involving a set of local features derived from the neighborhoods of the point. To speed up the neighbor search and enhance feature distinctiveness for pointwise classification, we exploit the topological and semantic information in the raw data acquired by light detection and ranging (LiDAR) and recorded in scan order. First, a two-dimensional (2D) scan grid for data indexing is recovered, and the relative 3D coordinates with respect to the LiDAR position are calculated. Subsequently, a set of local features is extracted using an efficient neighbor search method with a low computational complexity independent of the number of points in a point cloud. These features are further merged to produce a variety of binary classifiers for specific classes via a GentleBoost supervised learning algorithm combining decision trees. The experimental results on the Paris-rue-Cassette database demonstrate that the proposed approach outperforms the state-of-the-art methods with a 10% improvement in the F1 score, whereas it uses simpler geometric features derived from a spherical neighborhood with a radius of 0.5 m. © 2021 Society of Photo-Optical Instrumentation Engineers (SPIE).
CITATION STYLE
Li, Q., Yuan, P., Lin, Y., Tong, Y., & Liu, X. (2021). Pointwise classification of mobile laser scanning point clouds of urban scenes using raw data. Journal of Applied Remote Sensing, 15(02). https://doi.org/10.1117/1.jrs.15.024523
Mendeley helps you to discover research relevant for your work.