Irregular Change Detection in Sparse Bi-Temporal Point Clouds using Learned Place Recognition Descriptors and Point-to-Voxel Comparison
Nikolaos Stathoulopoulos, Anton Koval, George Nikolakopoulos

TL;DR
This paper introduces a novel method for change detection in 3D point clouds using deep learned descriptors and voxel-to-point comparison, improving accuracy in industrial environment monitoring.
Contribution
It combines deep learning-based feature extraction with voxel-to-point comparison for effective change detection in bi-temporal 3D point clouds.
Findings
Successfully detects object additions and displacements in real-world experiments.
Outperforms traditional methods in robustness and discriminative power.
Applicable to safety, security, and mapping in industrial environments.
Abstract
Change detection and irregular object extraction in 3D point clouds is a challenging task that is of high importance not only for autonomous navigation but also for updating existing digital twin models of various industrial environments. This article proposes an innovative approach for change detection in 3D point clouds using deep learned place recognition descriptors and irregular object extraction based on voxel-to-point comparison. The proposed method first aligns the bi-temporal point clouds using a map-merging algorithm in order to establish a common coordinate frame. Then, it utilizes deep learning techniques to extract robust and discriminative features from the 3D point cloud scans, which are used to detect changes between consecutive point cloud frames and therefore find the changed areas. Finally, the altered areas are sampled and compared between the two time instances to…
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Taxonomy
Topics3D Surveying and Cultural Heritage · Remote Sensing and LiDAR Applications · Remote-Sensing Image Classification
