TY - JOUR
T1 - Adaptive Trajectory Learning With Obstacle Awareness for Motion Planning
AU - Zheng, Huaihang
AU - Tan, Zimeng
AU - Wang, Junzheng
AU - Tavakoli, Mahdi
N1 - Publisher Copyright:
© 2016 IEEE. All rights reserved,
PY - 2025
Y1 - 2025
N2 - In motion planning, efficiently navigating from a start state to a goal state in spaces with narrow passages remains a significant challenge. Recently, learning-based methods have attracted considerable attention owing to their higher inference speeds compared to traditional approaches. However, the variability in state distribution on the expert path hinders the training of neural networks, while the overly dense states may lead to redundant decision iterations and unsatisfactory planning efficiency. In this letter, we present a novel deep learning framework for motion planning, termed Adaptive Trajectory Learning with Obstacle Awareness (ATOA). Instead of performing the conventional state-wise supervision that approaches the next state, we propose to learn the trajectory along the expert path. This mechanism not only mitigates the model’s dependence on the expert paths but also has the potential to yield more effective planning solutions. Additionally, obstacle information is explicitly integrated by penalizing predictions with obstacle collisions. To further enhance the planning success rate, we introduce a confidence-driven path correction (CDPC) module to adjust the infeasible local paths. Extensive experiments demonstrate the effectiveness and superiority of ATOA compared to prior approaches in handling complex scenarios.
AB - In motion planning, efficiently navigating from a start state to a goal state in spaces with narrow passages remains a significant challenge. Recently, learning-based methods have attracted considerable attention owing to their higher inference speeds compared to traditional approaches. However, the variability in state distribution on the expert path hinders the training of neural networks, while the overly dense states may lead to redundant decision iterations and unsatisfactory planning efficiency. In this letter, we present a novel deep learning framework for motion planning, termed Adaptive Trajectory Learning with Obstacle Awareness (ATOA). Instead of performing the conventional state-wise supervision that approaches the next state, we propose to learn the trajectory along the expert path. This mechanism not only mitigates the model’s dependence on the expert paths but also has the potential to yield more effective planning solutions. Additionally, obstacle information is explicitly integrated by penalizing predictions with obstacle collisions. To further enhance the planning success rate, we introduce a confidence-driven path correction (CDPC) module to adjust the infeasible local paths. Extensive experiments demonstrate the effectiveness and superiority of ATOA compared to prior approaches in handling complex scenarios.
KW - adaptive trajectory learning
KW - Deep learning methods
KW - motion and path planning
KW - obstacle awareness
UR - http://www.scopus.com/inward/record.url?scp=105001061268&partnerID=8YFLogxK
U2 - 10.1109/LRA.2025.3544491
DO - 10.1109/LRA.2025.3544491
M3 - Article
AN - SCOPUS:105001061268
SN - 2377-3766
VL - 10
SP - 3884
EP - 3891
JO - IEEE Robotics and Automation Letters
JF - IEEE Robotics and Automation Letters
IS - 4
ER -