Ibrahim Sayed, Andrejs Cvetkovs, Kaspars Ozols and Rihards Novickis. Deviations Detection in Registered 3D Point Clouds. 2024 19th Biennial Baltic Electronics Conference (BEC, 1-4 pp. IEEE, 2024.
Bibtex citation:
Bibtex citation:
@inproceedings{16870_2024,
author = {Ibrahim Sayed and Andrejs Cvetkovs and Kaspars Ozols and Rihards Novickis},
title = {Deviations Detection in Registered 3D Point Clouds},
journal = {2024 19th Biennial Baltic Electronics Conference (BEC},
pages = {1-4},
publisher = {IEEE},
year = {2024}
}
author = {Ibrahim Sayed and Andrejs Cvetkovs and Kaspars Ozols and Rihards Novickis},
title = {Deviations Detection in Registered 3D Point Clouds},
journal = {2024 19th Biennial Baltic Electronics Conference (BEC},
pages = {1-4},
publisher = {IEEE},
year = {2024}
}
Abstract: This paper explores the validity of three distance metrics: a Point-to-Point distance, a Point-to-Plane distance and a Modified Hausdorff Distance, in detecting the misplacement of a Time-of-Flight camera in a registered 360-degree surround view perception system installed on a vehicle.
The vehicle's undamped mechanical vibrations can unexpectedly pivot one of the cameras to an unforeseen orientation, leading to inaccurate processes that rely on correct registered point clouds.
Parameterizing the camera exterior 3D orientation and synthesizing point clouds of a city model inside Blender shows that a pair of registered point clouds has a unique distance value in the camera configuration space for each metric method. This allows continuous monitoring over time and notifies the user of any sudden changes in the camera configuration.