XDLL: Explained Deep Learning LiDAR-Based Localization and Mapping Method for Self-Driving Vehicles

被引:7
|
作者
Charroud, Anas [1 ]
El Moutaouakil, Karim [1 ]
Palade, Vasile [2 ]
Yahyaouy, Ali [3 ]
机构
[1] Sidi Mohamed Ben Abdellah Univ, Polydisciplinary Fac Taza, Lab Engn Sci, Fes 30000, Morocco
[2] Coventry Univ, Ctr Computat Sci & Math Modelling, Priory Rd, Coventry CV1 5FB, England
[3] Dhar EI Mahraz Sidi Mohamed Ben Abdellah Univ, Sci Fac, Comp Sci Signals Automat & Cognitivism Lab, Fes 30000, Morocco
关键词
LSTM; GRU; convolutional neural networks; localization; mapping; feature extraction; self-driving vehicles; SLAM;
D O I
10.3390/electronics12030567
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Self-driving vehicles need a robust positioning system to continue the revolution in intelligent transportation. Global navigation satellite systems (GNSS) are most commonly used to accomplish this task because of their ability to accurately locate the vehicle in the environment. However, recent publications have revealed serious cases where GNSS fails miserably to determine the position of the vehicle, for example, under a bridge, in a tunnel, or in dense forests. In this work, we propose a framework architecture of explaining deep learning LiDAR-based (XDLL) models that predicts the position of the vehicles by using only a few LiDAR points in the environment, which ensures the required fastness and accuracy of interactions between vehicle components. The proposed framework extracts non-semantic features from LiDAR scans using a clustering algorithm. The identified clusters serve as input to our deep learning model, which relies on LSTM and GRU layers to store the trajectory points and convolutional layers to smooth the data. The model has been extensively tested with short- and long-term trajectories from two benchmark datasets, Kitti and NCLT, containing different environmental scenarios. Moreover, we investigated the obtained results by explaining the contribution of each cluster feature by using several explainable methods, including Saliency, SmoothGrad, and VarGrad. The analysis showed that taking the mean of all the clusters as an input for the model is enough to obtain better accuracy compared to the first model, and it reduces the time consumption as well. The improved model is able to obtain a mean absolute positioning error of below one meter for all sequences in the short- and long-term trajectories.
引用
收藏
页数:18
相关论文
共 50 条
  • [21] A hierarchical detection method in external communication for self-driving vehicles based on TDMA
    Alheeti, Khattab M. Ali
    Al-Ani, Muzhir Shaban
    McDonald-Maier, Klaus
    PLOS ONE, 2018, 13 (01):
  • [22] LiDAR and Camera Fusion Approach for Object Distance Estimation in Self-Driving Vehicles
    Kumar, G. Ajay
    Lee, Jin Hee
    Hwang, Jongrak
    Park, Jaehyeong
    Youn, Sung Hoon
    Kwon, Soon
    SYMMETRY-BASEL, 2020, 12 (02):
  • [23] Traffic Sign Recognition Using Multi-Task Deep Learning for Self-Driving Vehicles
    Alawaji, Khaldaa
    Hedjar, Ramdane
    Zuair, Mansour
    SENSORS, 2024, 24 (11)
  • [24] Deep imitation reinforcement learning for self-driving by vision
    Zou, Qijie
    Xiong, Kang
    Fang, Qiang
    Jiang, Bohan
    CAAI TRANSACTIONS ON INTELLIGENCE TECHNOLOGY, 2021, 6 (04) : 493 - 503
  • [25] Deep regression for LiDAR-based localization in dense urban areas
    Yu, Shangshu
    Wang, Cheng
    Yu, Zenglei
    Li, Xin
    Cheng, Ming
    Zang, Yu
    ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2021, 172 : 240 - 252
  • [26] Image-based Localization for Self-driving Vehicles Based on Online Network Adjustment in A Dynamic Scope
    Lu, Guoyu
    2022 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2022,
  • [27] Image-based Localization for Self-driving Vehicles Based on Online Network Adjustment in A Dynamic Scope
    Lu, Guoyu
    Proceedings of the International Joint Conference on Neural Networks, 2022, 2022-July
  • [28] ICRAN: Intelligent Control for Self-Driving RAN Based on Deep Reinforcement Learning
    Ahmed, Azza H.
    Elmokashfi, Ahmed
    IEEE TRANSACTIONS ON NETWORK AND SERVICE MANAGEMENT, 2022, 19 (03): : 2751 - 2766
  • [29] A Survey on Theories and Applications for Self-Driving Cars Based on Deep Learning Methods
    Ni, Jianjun
    Chen, Yinan
    Chen, Yan
    Zhu, Jinxiu
    Ali, Deena
    Cao, Weidong
    APPLIED SCIENCES-BASEL, 2020, 10 (08):
  • [30] TENSORMAP: LIDAR-BASED TOPOLOGICAL MAPPING AND LOCALIZATION VIA TENSOR DECOMPOSITIONS
    Rambhatla, Sirisha
    Sidiropoulos, Nikos D.
    Haupt, Jarvis
    2018 IEEE GLOBAL CONFERENCE ON SIGNAL AND INFORMATION PROCESSING (GLOBALSIP 2018), 2018, : 1368 - 1372