Momentum-constrained Hybrid Heuristic Trajectory Optimization Framework with Residual-enhanced DRL for Visually Impaired Scenarios
Yuting Zeng, Zhiwen Zheng, Jingya Wang, You Zhou, JiaLing Xiao + 4 more
TLDR
MHHTOF is a hybrid trajectory optimization framework with DRL for visually impaired scenarios, enhancing safety, comfort, and efficiency.
Key contributions
- Designs HTSC with MTO to balance comfort and safety by suppressing abrupt velocity and acceleration changes.
- Introduces residual-enhanced DRL for refining trajectories, improving temporal modeling and policy generalization.
- Employs a dual-stage cost modeling (DCMM) for consistent optimization and user-centric decision-making.
- Achieves faster convergence and lower, more stable costs in complex dynamic scenarios compared to baselines.
Why it matters
This paper addresses critical challenges in assistive planning for visually impaired individuals, offering a robust, safe, and efficient solution. It significantly improves multi-objective optimization, generalization, and interpretability in complex dynamic scenarios.
Original Abstract
Safe and efficient assistive planning for visually impaired scenarios remains challenging, since existing methods struggle with multi-objective optimization, generalization, and interpretability. In response, this paper proposes a Momentum-Constrained Hybrid Heuristic Trajectory Optimization Framework (MHHTOF). To balance multiple objectives of comfort and safety, the framework designs a Heuristic Trajectory Sampling Cluster (HTSC) with a Momentum-Constrained Trajectory Optimization (MTO), which suppresses abrupt velocity and acceleration changes. In addition, a novel residual-enhanced deep reinforcement learning (DRL) module refines candidate trajectories, advancing temporal modeling and policy generalization. Finally, a dual-stage cost modeling mechanism (DCMM) is introduced to regulate optimization, where costs in the Frenet space ensure consistency, and reward-driven adaptive weights in the Cartesian space integrate user preferences for interpretability and user-centric decision-making. Experimental results show that the proposed framework converges in nearly half the iterations of baselines and achieves lower and more stable costs. In complex dynamic scenarios, MHHTOF further demonstrates stable velocity and acceleration curves with reduced risk, confirming its advantages in robustness, safety, and efficiency.
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