Unsupervised Machine Learning for Detecting and Locating Human-Made Objects in 3D Point Cloud
Hong Zhao, Huyunting Huang, Tonglin Zhang, Baijian Yang, Jin, Wei-Kocsis, and Songlin Fei

TL;DR
This paper presents a novel unsupervised approach for detecting and locating human-made objects in 3D LiDAR point clouds, using ground filtering, local information extraction, and clustering to distinguish objects from natural features.
Contribution
It introduces a new ground filtering method based on One-Sided Regression and a kernel-based local information extraction technique, enabling unsupervised detection of human-made objects.
Findings
Ground filtering outperforms previous methods on uneven terrains.
LIE method effectively distinguishes trees from human-made objects.
Clustering with GMM accurately classifies non-ground points.
Abstract
A 3D point cloud is an unstructured, sparse, and irregular dataset, typically collected by airborne LiDAR systems over a geological region. Laser pulses emitted from these systems reflect off objects both on and above the ground, resulting in a dataset containing the longitude, latitude, and elevation of each point, as well as information about the corresponding laser pulse strengths. A widely studied research problem, addressed in many previous works, is ground filtering, which involves partitioning the points into ground and non-ground subsets. This research introduces a novel task: detecting and identifying human-made objects amidst natural tree structures. This task is performed on the subset of non-ground points derived from the ground filtering stage. Marked Point Fields (MPFs) are used as models well-suited to these tasks. The proposed methodology consists of three stages: ground…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Image Processing and 3D Reconstruction · Remote Sensing and LiDAR Applications
