Continual Learning with Evaluation for Motion Planning in Unstructured Environments

Yao Xiao, Yuchun Wang, Cheng Gong, Jianwei Gong*

*Corresponding author for this work

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Learning-based motion planning methods for unmanned ground vehicles (UGV) have shown significant advantages in terms of real-time performance and adaptability. However, their performances are usually dependent on the quality of demonstration data. Thus, even with the increased amount of training data, the model performance may still degrade due to imperfect demonstrations within the increased data. Moreover, newly collected demonstrations usually require to be trained with historical data to avoiding forgetting previous knowledge, which further hinders the efficiency in updating and improving the model. To tackle these problems, this paper introduces a continual learning framework for UGV motion planning in unstructured environments, enabling model learning from the optimal demonstrations without forgetting previously learned knowledge. Within this framework, an evaluation-based training data filtering method is implemented to filter out poorly performing demonstration data, thus preventing model performance degradation caused by imperfect demonstrations. Furthermore, a continual learning algorithm was employed to achieve the continuous and efficient improvement of the motion planning model with accumulative data. Additionally, this study collects real-world data from diverse unstructured scenes for training and evaluating the proposed framework. The results indicate that, using the same training data, the motion planning model based on the proposed continual learning framework achieves a 33.1% improvement in efficiency and a 28.1% improvement in smoothness compared to the model obtained through traditional imitation learning.

Original languageEnglish
Title of host publicationProceedings of 4th 2024 International Conference on Autonomous Unmanned Systems (4th ICAUS 2024)
EditorsLianqing Liu, Yifeng Niu, Wenxing Fu, Yi Qu
PublisherSpringer Science and Business Media Deutschland GmbH
Pages184-197
Number of pages14
ISBN (Print)9789819635597
DOIs
Publication statusPublished - 2025
Event4th International Conference on Autonomous Unmanned Systems, ICAUS 2024 - Shenyang, China
Duration: 19 Sept 202421 Sept 2024

Publication series

NameLecture Notes in Electrical Engineering
Volume1375 LNEE
ISSN (Print)1876-1100
ISSN (Electronic)1876-1119

Conference

Conference4th International Conference on Autonomous Unmanned Systems, ICAUS 2024
Country/TerritoryChina
CityShenyang
Period19/09/2421/09/24

Keywords

  • Continual Learning
  • Motion Planning
  • Unmanned Vehicles
  • Unstructured Environments

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