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Main Authors: Shen, Yutong, Xia, Ruizhe, Yan, Bokai, zhang, Shunqi, Xiang, Pengrui, He, Sicheng, Xu, Yixin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.10305
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author Shen, Yutong
Xia, Ruizhe
Yan, Bokai
zhang, Shunqi
Xiang, Pengrui
He, Sicheng
Xu, Yixin
author_facet Shen, Yutong
Xia, Ruizhe
Yan, Bokai
zhang, Shunqi
Xiang, Pengrui
He, Sicheng
Xu, Yixin
contents In dynamic and uncertain environments, robotic path planning demands accurate spatiotemporal environment understanding combined with robust decision-making under partial observability. However, current deep reinforcement learning-based path planning methods face two fundamental limitations: (1) insufficient modeling of multi-scale temporal dependencies, resulting in suboptimal adaptability in dynamic scenarios, and (2) inefficient exploration-exploitation balance, leading to degraded path quality. To address these challenges, we propose GundamQ: A Multi-Scale Spatiotemporal Q-Network for Robotic Path Planning. The framework comprises two key modules: (i) the Spatiotemporal Perception module, which hierarchically extracts multi-granularity spatial features and multi-scale temporal dependencies ranging from instantaneous to extended time horizons, thereby improving perception accuracy in dynamic environments; and (ii) the Adaptive Policy Optimization module, which balances exploration and exploitation during training while optimizing for smoothness and collision probability through constrained policy updates. Experiments in dynamic environments demonstrate that GundamQ achieves a 15.3\% improvement in success rate and a 21.7\% increase in overall path quality, significantly outperforming existing state-of-the-art methods.
format Preprint
id arxiv_https___arxiv_org_abs_2509_10305
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle GundamQ: Multi-Scale Spatio-Temporal Representation Learning for Robust Robot Path Planning
Shen, Yutong
Xia, Ruizhe
Yan, Bokai
zhang, Shunqi
Xiang, Pengrui
He, Sicheng
Xu, Yixin
Robotics
In dynamic and uncertain environments, robotic path planning demands accurate spatiotemporal environment understanding combined with robust decision-making under partial observability. However, current deep reinforcement learning-based path planning methods face two fundamental limitations: (1) insufficient modeling of multi-scale temporal dependencies, resulting in suboptimal adaptability in dynamic scenarios, and (2) inefficient exploration-exploitation balance, leading to degraded path quality. To address these challenges, we propose GundamQ: A Multi-Scale Spatiotemporal Q-Network for Robotic Path Planning. The framework comprises two key modules: (i) the Spatiotemporal Perception module, which hierarchically extracts multi-granularity spatial features and multi-scale temporal dependencies ranging from instantaneous to extended time horizons, thereby improving perception accuracy in dynamic environments; and (ii) the Adaptive Policy Optimization module, which balances exploration and exploitation during training while optimizing for smoothness and collision probability through constrained policy updates. Experiments in dynamic environments demonstrate that GundamQ achieves a 15.3\% improvement in success rate and a 21.7\% increase in overall path quality, significantly outperforming existing state-of-the-art methods.
title GundamQ: Multi-Scale Spatio-Temporal Representation Learning for Robust Robot Path Planning
topic Robotics
url https://arxiv.org/abs/2509.10305