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Autori principali: Zhong, Ping, Liu, Liangbai, Chen, Bolei, Wu, Tao, Xia, Jiazhi, Mu, Chaoxu, Wang, Jianxin
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2601.14649
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author Zhong, Ping
Liu, Liangbai
Chen, Bolei
Wu, Tao
Xia, Jiazhi
Mu, Chaoxu
Wang, Jianxin
author_facet Zhong, Ping
Liu, Liangbai
Chen, Bolei
Wu, Tao
Xia, Jiazhi
Mu, Chaoxu
Wang, Jianxin
contents Mobile Manipulation (MM) involves long-horizon decision-making over multi-stage compositions of heterogeneous skills, such as navigation and picking up objects. Despite recent progress, existing MM methods still face two key limitations: (i) low sample efficiency, due to ineffective use of redundant data generated during long-term MM interactions; and (ii) poor spatial generalization, as policies trained on specific tasks struggle to transfer to new spatial layouts without additional training. In this paper, we address these challenges through Adaptive Experience Selection (AES) and model-based dynamic imagination. In particular, AES makes MM agents pay more attention to critical experience fragments in long trajectories that affect task success, improving skill chain learning and mitigating skill forgetting. Based on AES, a Recurrent State-Space Model (RSSM) is introduced for Model-Predictive Forward Planning (MPFP) by capturing the coupled dynamics between the mobile base and the manipulator and imagining the dynamics of future manipulations. RSSM-based MPFP can reinforce MM skill learning on the current task while enabling effective generalization to new spatial layouts. Comparative studies across different experimental configurations demonstrate that our method significantly outperforms existing MM policies. Real-world experiments further validate the feasibility and practicality of our method.
format Preprint
id arxiv_https___arxiv_org_abs_2601_14649
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Spatially Generalizable Mobile Manipulation via Adaptive Experience Selection and Dynamic Imagination
Zhong, Ping
Liu, Liangbai
Chen, Bolei
Wu, Tao
Xia, Jiazhi
Mu, Chaoxu
Wang, Jianxin
Robotics
Mobile Manipulation (MM) involves long-horizon decision-making over multi-stage compositions of heterogeneous skills, such as navigation and picking up objects. Despite recent progress, existing MM methods still face two key limitations: (i) low sample efficiency, due to ineffective use of redundant data generated during long-term MM interactions; and (ii) poor spatial generalization, as policies trained on specific tasks struggle to transfer to new spatial layouts without additional training. In this paper, we address these challenges through Adaptive Experience Selection (AES) and model-based dynamic imagination. In particular, AES makes MM agents pay more attention to critical experience fragments in long trajectories that affect task success, improving skill chain learning and mitigating skill forgetting. Based on AES, a Recurrent State-Space Model (RSSM) is introduced for Model-Predictive Forward Planning (MPFP) by capturing the coupled dynamics between the mobile base and the manipulator and imagining the dynamics of future manipulations. RSSM-based MPFP can reinforce MM skill learning on the current task while enabling effective generalization to new spatial layouts. Comparative studies across different experimental configurations demonstrate that our method significantly outperforms existing MM policies. Real-world experiments further validate the feasibility and practicality of our method.
title Spatially Generalizable Mobile Manipulation via Adaptive Experience Selection and Dynamic Imagination
topic Robotics
url https://arxiv.org/abs/2601.14649