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Feasibility of Hyperspectral Single Photon Lidar for Robust Autonomous Vehicle Perception

Autonomous vehicle perception systems typically rely on single-wavelength lidar sensors to obtain three-dimensional information about the road environment. In contrast to cameras, lidars are unaffected by challenging illumination conditions, such as low light during night-time and various bidirectio...

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Autores principales: Taher, Josef, Hakala, Teemu, Jaakkola, Anttoni, Hyyti, Heikki, Kukko, Antero, Manninen, Petri, Maanpää, Jyri, Hyyppä, Juha
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9371088/
https://www.ncbi.nlm.nih.gov/pubmed/35957316
http://dx.doi.org/10.3390/s22155759
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author Taher, Josef
Hakala, Teemu
Jaakkola, Anttoni
Hyyti, Heikki
Kukko, Antero
Manninen, Petri
Maanpää, Jyri
Hyyppä, Juha
author_facet Taher, Josef
Hakala, Teemu
Jaakkola, Anttoni
Hyyti, Heikki
Kukko, Antero
Manninen, Petri
Maanpää, Jyri
Hyyppä, Juha
author_sort Taher, Josef
collection PubMed
description Autonomous vehicle perception systems typically rely on single-wavelength lidar sensors to obtain three-dimensional information about the road environment. In contrast to cameras, lidars are unaffected by challenging illumination conditions, such as low light during night-time and various bidirectional effects changing the return reflectance. However, as many commercial lidars operate on a monochromatic basis, the ability to distinguish objects based on material spectral properties is limited. In this work, we describe the prototype hardware for a hyperspectral single photon lidar and demonstrate the feasibility of its use in an autonomous-driving-related object classification task. We also introduce a simple statistical model for estimating the reflectance measurement accuracy of single photon sensitive lidar devices. The single photon receiver frame was used to receive 30 12.3 nm spectral channels in the spectral band 1200–1570 nm, with a maximum channel-wise intensity of 32 photons. A varying number of frames were used to accumulate the signal photon count. Multiple objects covering 10 different categories of road environment, such as car, dry asphalt, gravel road, snowy asphalt, wet asphalt, wall, granite, grass, moss, and spruce tree, were included in the experiments. We test the influence of the number of spectral channels and the number of frames on the classification accuracy with random forest classifier and find that the spectral information increases the classification accuracy in the high-photon flux regime from 50% to 94% with 2 channels and 30 channels, respectively. In the low-photon flux regime, the classification accuracy increases from 30% to 38% with 2 channels and 6 channels, respectively. Additionally, we visualize the data with the t-SNE algorithm and show that the photon shot noise in the single photon sensitive hyperspectral data contributes the most to the separability of material specific spectral signatures. The results of this study provide support for the use of hyperspectral single photon lidar data on more advanced object detection and classification methods, and motivates the development of advanced single photon sensitive hyperspectral lidar devices for use in autonomous vehicles and in robotics.
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spelling pubmed-93710882022-08-12 Feasibility of Hyperspectral Single Photon Lidar for Robust Autonomous Vehicle Perception Taher, Josef Hakala, Teemu Jaakkola, Anttoni Hyyti, Heikki Kukko, Antero Manninen, Petri Maanpää, Jyri Hyyppä, Juha Sensors (Basel) Article Autonomous vehicle perception systems typically rely on single-wavelength lidar sensors to obtain three-dimensional information about the road environment. In contrast to cameras, lidars are unaffected by challenging illumination conditions, such as low light during night-time and various bidirectional effects changing the return reflectance. However, as many commercial lidars operate on a monochromatic basis, the ability to distinguish objects based on material spectral properties is limited. In this work, we describe the prototype hardware for a hyperspectral single photon lidar and demonstrate the feasibility of its use in an autonomous-driving-related object classification task. We also introduce a simple statistical model for estimating the reflectance measurement accuracy of single photon sensitive lidar devices. The single photon receiver frame was used to receive 30 12.3 nm spectral channels in the spectral band 1200–1570 nm, with a maximum channel-wise intensity of 32 photons. A varying number of frames were used to accumulate the signal photon count. Multiple objects covering 10 different categories of road environment, such as car, dry asphalt, gravel road, snowy asphalt, wet asphalt, wall, granite, grass, moss, and spruce tree, were included in the experiments. We test the influence of the number of spectral channels and the number of frames on the classification accuracy with random forest classifier and find that the spectral information increases the classification accuracy in the high-photon flux regime from 50% to 94% with 2 channels and 30 channels, respectively. In the low-photon flux regime, the classification accuracy increases from 30% to 38% with 2 channels and 6 channels, respectively. Additionally, we visualize the data with the t-SNE algorithm and show that the photon shot noise in the single photon sensitive hyperspectral data contributes the most to the separability of material specific spectral signatures. The results of this study provide support for the use of hyperspectral single photon lidar data on more advanced object detection and classification methods, and motivates the development of advanced single photon sensitive hyperspectral lidar devices for use in autonomous vehicles and in robotics. MDPI 2022-08-02 /pmc/articles/PMC9371088/ /pubmed/35957316 http://dx.doi.org/10.3390/s22155759 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Taher, Josef
Hakala, Teemu
Jaakkola, Anttoni
Hyyti, Heikki
Kukko, Antero
Manninen, Petri
Maanpää, Jyri
Hyyppä, Juha
Feasibility of Hyperspectral Single Photon Lidar for Robust Autonomous Vehicle Perception
title Feasibility of Hyperspectral Single Photon Lidar for Robust Autonomous Vehicle Perception
title_full Feasibility of Hyperspectral Single Photon Lidar for Robust Autonomous Vehicle Perception
title_fullStr Feasibility of Hyperspectral Single Photon Lidar for Robust Autonomous Vehicle Perception
title_full_unstemmed Feasibility of Hyperspectral Single Photon Lidar for Robust Autonomous Vehicle Perception
title_short Feasibility of Hyperspectral Single Photon Lidar for Robust Autonomous Vehicle Perception
title_sort feasibility of hyperspectral single photon lidar for robust autonomous vehicle perception
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9371088/
https://www.ncbi.nlm.nih.gov/pubmed/35957316
http://dx.doi.org/10.3390/s22155759
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