Sensing and machine learning for automotive perception: a review
Automotive perception involves understanding the external driving environment and the internal state of the vehicle cabin and occupants using sensor data. It is critical to achieving high levels of safety and autonomy in driving. This article provides an overview of different sensor modalities, such...
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sg-ntu-dr.10356-1706982023-09-26T03:19:04Z Sensing and machine learning for automotive perception: a review Pandharipande, Ashish Cheng, Chih-Hong Dauwels, Justin Gurbuz, Sevgi Z. Ibanez-Guzman, Javier Li, Guofa Piazzoni, Andrea Wang, Pu Santra, Avik Interdisciplinary Graduate School (IGS) Energy Research Institute @ NTU (ERI@N) Centre of Excellence for Testing & Research of Autonomous Vehicles NTU (CETRAN) Engineering::Electrical and electronic engineering Sensors Automotive Engineering Automotive perception involves understanding the external driving environment and the internal state of the vehicle cabin and occupants using sensor data. It is critical to achieving high levels of safety and autonomy in driving. This article provides an overview of different sensor modalities, such as cameras, radars, and light detection and ranging (LiDAR) used commonly for perception, along with the associated data processing techniques. Critical aspects of perception are considered, such as architectures for processing data from single or multiple sensor modalities, sensor data processing algorithms and the role of machine learning techniques, methodologies for validating the performance of perception systems, and safety. The technical challenges for each aspect are analyzed, emphasizing machine learning approaches, given their potential impact on improving perception. Finally, future research opportunities in automotive perception for their wider deployment are outlined. 2023-09-26T03:19:04Z 2023-09-26T03:19:04Z 2023 Journal Article Pandharipande, A., Cheng, C., Dauwels, J., Gurbuz, S. Z., Ibanez-Guzman, J., Li, G., Piazzoni, A., Wang, P. & Santra, A. (2023). Sensing and machine learning for automotive perception: a review. IEEE Sensors Journal, 23(11), 11097-11115. https://dx.doi.org/10.1109/JSEN.2023.3262134 1530-437X https://hdl.handle.net/10356/170698 10.1109/JSEN.2023.3262134 2-s2.0-85153357582 11 23 11097 11115 en IEEE Sensors Journal © 2023 IEEE. All rights reserved. |
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Engineering::Electrical and electronic engineering Sensors Automotive Engineering Pandharipande, Ashish Cheng, Chih-Hong Dauwels, Justin Gurbuz, Sevgi Z. Ibanez-Guzman, Javier Li, Guofa Piazzoni, Andrea Wang, Pu Santra, Avik Sensing and machine learning for automotive perception: a review |
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Automotive perception involves understanding the external driving environment and the internal state of the vehicle cabin and occupants using sensor data. It is critical to achieving high levels of safety and autonomy in driving. This article provides an overview of different sensor modalities, such as cameras, radars, and light detection and ranging (LiDAR) used commonly for perception, along with the associated data processing techniques. Critical aspects of perception are considered, such as architectures for processing data from single or multiple sensor modalities, sensor data processing algorithms and the role of machine learning techniques, methodologies for validating the performance of perception systems, and safety. The technical challenges for each aspect are analyzed, emphasizing machine learning approaches, given their potential impact on improving perception. Finally, future research opportunities in automotive perception for their wider deployment are outlined. |
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Interdisciplinary Graduate School (IGS) |
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Interdisciplinary Graduate School (IGS) Pandharipande, Ashish Cheng, Chih-Hong Dauwels, Justin Gurbuz, Sevgi Z. Ibanez-Guzman, Javier Li, Guofa Piazzoni, Andrea Wang, Pu Santra, Avik |
format |
Article |
author |
Pandharipande, Ashish Cheng, Chih-Hong Dauwels, Justin Gurbuz, Sevgi Z. Ibanez-Guzman, Javier Li, Guofa Piazzoni, Andrea Wang, Pu Santra, Avik |
author_sort |
Pandharipande, Ashish |
title |
Sensing and machine learning for automotive perception: a review |
title_short |
Sensing and machine learning for automotive perception: a review |
title_full |
Sensing and machine learning for automotive perception: a review |
title_fullStr |
Sensing and machine learning for automotive perception: a review |
title_full_unstemmed |
Sensing and machine learning for automotive perception: a review |
title_sort |
sensing and machine learning for automotive perception: a review |
publishDate |
2023 |
url |
https://hdl.handle.net/10356/170698 |
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1779156786997100544 |