Constraint-Aware Zero-Shot Vision-Language Navigation in Continuous Environments
Constraint-Aware Zero-Shot Vision-Language Navigation in Continuous Environments
We address the task of Vision-Language Navigation in Continuous Environments (VLN-CE) under the zero-shot setting. Zero-shot VLN-CE is particularly challenging due to the absence of expert demonstrations for training and minimal environment structural prior to guide navigation. To confront these challenges, we propose a Constraint-Aware Navigator (CA-Nav), which reframes zero-shot VLN-CE as a sequential, constraint-aware sub-instruction completion process. CA-Nav continuously translates sub-instructions into navigation plans using two core modules: the Constraint-Aware Sub-instruction Manager (CSM) and the Constraint-Aware Value Mapper (CVM). CSM defines the completion criteria for decomposed sub-instructions as constraints and tracks navigation progress by switching sub-instructions in a constraint-aware manner. CVM, guided by CSM's constraints, generates a value map on the fly and refines it using superpixel clustering to improve navigation stability. CA-Nav achieves the state-of-the-art performance on two VLN-CE benchmarks, surpassing the previous best method by 12 percent and 13 percent in Success Rate on the validation unseen splits of R2R-CE and RxR-CE, respectively. Moreover, CA-Nav demonstrates its effectiveness in real-world robot deployments across various indoor scenes and instructions.
Kehan Chen、Dong An、Yan Huang、Rongtao Xu、Yifei Su、Yonggen Ling、Ian Reid、Liang Wang
计算技术、计算机技术
Kehan Chen,Dong An,Yan Huang,Rongtao Xu,Yifei Su,Yonggen Ling,Ian Reid,Liang Wang.Constraint-Aware Zero-Shot Vision-Language Navigation in Continuous Environments[EB/OL].(2024-12-13)[2025-08-02].https://arxiv.org/abs/2412.10137.点此复制
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