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Autor(in)
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Datum
2021-01Typ
- Conference Paper
ETH Bibliographie
yes
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Abstract
LiDAR sensors have been very popular in robotics due to their ability to provide accurate range measurements and their robustness to lighting conditions. However, their sensitivity to airborne particles such as dust or fog can lead to perception algorithm failures (e.g., the detection of false obstacles by field robots). In this work, we address this problem by proposing methods to classify airborne particles in LiDAR data. We propose and compare two deep learning approaches, the first is based on voxel-wise classification, while the second is based on point-wise classification. We also study the impact of different combinations of input features extracted from LiDAR data, including the use of multi-echo returns as a classification feature. We evaluate the performance of the proposed methods on a realistic dataset with the presence of fog and dust particles in outdoor scenes. We achieve an F1 score of 94% for the classification of airborne particles in LiDAR point clouds, thereby significantly outperforming the state of the art. We show the practical significance of this work on two real-world use cases: a relative pose estimation task using point cloud matching, and an obstacle detection task. The code and dataset used for this work are available online. Mehr anzeigen
Publikationsstatus
publishedExterne Links
Buchtitel
Field and Service RoboticsZeitschrift / Serie
Springer Proceedings in Advanced RoboticsBand
Seiten / Artikelnummer
Verlag
SpringerKonferenz
Organisationseinheit
03737 - Siegwart, Roland Y. / Siegwart, Roland Y.
Anmerkungen
Conference lecture on August 29, 2019.ETH Bibliographie
yes
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