Smart City Gnosys

Smart city article details

Title Lidar Point Cloud Compression, Processing And Learning For Autonomous Driving
ID_Doc 35171
Authors Abbasi R.; Bashir A.K.; Alyamani H.J.; Amin F.; Doh J.; Chen J.
Year 2023
Published IEEE Transactions on Intelligent Transportation Systems, 24, 1
DOI http://dx.doi.org/10.1109/TITS.2022.3167957
Abstract As technology advances, cities are getting smarter. Smart mobility is the key element in smart cities and Autonomous Driving (AV) are an essential part of smart mobility. However, the vulnerability of unmanned vehicles can also affect the value of life and human safety. In this paper, we provide a comprehensive analysis of 3D Point-Cloud (3DPC) processing and learning in terms of development, advancement, and performance for the AV system. 3DPC has recently attracted growing interest due to its extensive applications, such as autonomous driving, computer vision, and robotics. Light Detection and Ranging Sensors (LiDAR) is one of the most significant sensors in AV, which collects 3DPC that can accurately capture the outer surfaces of scenes and objects. Learning and processing tools in the 3DPC are essential for creating maps, perceptions, and localization devices in AV. The intention behind 3DPC learning and practical processing tools is to be considered the most essential modules to create, locate, and perceive maps in an AV system. The goal of the study is to know 'what has been tested in AV system so far and what is necessary to make it safer and more practical in AV system.' We also provide insights into the necessary open problems that are required to be resolved in the future. © 2000-2011 IEEE.
Author Keywords 3D LiDAR data; cybersecurity; deep learning; object detection and tracking; Self-driving cars; vehicle safety


Similar Articles


Id Similarity Authors Title Published
6756 View0.891Cherif B.; Ghazzai H.; Alsharoa A.; Besbes H.; Massoud Y.Aerial Lidar-Based 3D Object Detection And Tracking For Traffic MonitoringProceedings - IEEE International Symposium on Circuits and Systems, 2023-May (2023)
59331 View0.863Yang B.; Dong Z.; Liang F.; Mi X.Ubiquitous Point Cloud: Theory, Model, And ApplicationsUbiquitous Point Cloud: Theory, Model, and Applications (2024)
57313 View0.863Fan Y.-C.; Ning H.-I.Three Dimensional Light Detection And Ranging Decoder Design For Autonomous Vehicles TechnologiesISPCE-ASIA 2021 - IEEE International Symposium on Product Compliance Engineering-Asia, Proceeding (2021)
38397 View0.862Wang X.; Li K.; Chehri A.Multi-Sensor Fusion Technology For 3D Object Detection In Autonomous Driving: A ReviewIEEE Transactions on Intelligent Transportation Systems, 25, 2 (2024)
17879 View0.861Ponnaganti V.; Moh M.; Moh T.-S.Deep Learning For Lidar-Based Autonomous Vehicles In Smart CitiesHandbook of Smart Cities (2021)
35170 View0.86Cherif B.; Ghazzai H.; Alsharoa A.Lidar From The Sky: Uav Integration And Fusion Techniques For Advanced Traffic MonitoringIEEE Systems Journal, 18, 3 (2024)
13121 View0.86Jovanovic, D; Milovanov, S; Ruskovski, I; Govedarica, M; Sladic, D; Radulovic, A; Pajic, VBuilding Virtual 3D City Model For Smart Cities Applications: A Case Study On Campus Area Of The University Of Novi SadISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 9, 8 (2020)
59333 View0.859Liu X.; Ma W.Ubiquitous Sensing For Smart Cities With Autonomous VehiclesThe Rise of Smart Cities: Advanced Structural Sensing and Monitoring Systems (2022)
198 View0.857Li Z.; Tian C.; Yuan H.; Lu X.; Malekmohamadi H.3D-Msfc: A 3D Multi-Scale Features Compression Method For Object DetectionDisplays, 85 (2024)
10790 View0.857Samonte M.J.C.; Laqueo L.M.D.; Mampusti R.K.L.; Panganiban K.D.H.Assessing The Security And Architectural Frameworks Of Self-Driving Cars In Smart Cities2024 8th International Conference on Smart Grid and Smart Cities, ICSGSC 2024 (2024)