MVP-Nav: Multi-layer Value Map Planner Navigator
摘要
Zero-shot Object Goal Navigation (ZSON) with RGB-only perception poses a fundamental challenge for embodied agents, as the absence of explicit depth information introduces severe physical uncertainty and semantic-physical misalignment. Existing approaches either rely on high-level semantic reasoning without geometric grounding or learn end-to-end policies that lack explicit physical constraints, often resulting in semantically plausible but physically unsafe behaviors. In this paper, we propose MVP-Nav, a physical-aware RGB-only navigation framework that aligns perception, planning, and control with the real 3D world. MVP-Nav reconstructs explicit physical occupancy from monocular observations by leveraging 3D foundation models to project 2D semantic instances into 3D oriented bounding boxes, forming a global spatial semantic representation. To unify high-level semantic reasoning and low-level physical constraints, we introduce a Multi-layer Value Map (MVM) that integrates semantic priorities and reconstructed geometry into a shared cost space, enabling physically grounded geometric planning. Extensive experiments on zero-shot object navigation benchmarks demonstrate that MVP-Nav significantly outperforms existing depth-free methods, achieving state-of-the-art performance and validating that structured physical priors can effectively compensate for the absence of active depth sensors.
引用
@article{arxiv.2606.31919,
title = {MVP-Nav: Multi-layer Value Map Planner Navigator},
author = {Wenyuan Xie and Shaokai Wu and Yijin Zhou and Yanbiao Ji and Guodong Zhang and Bayram Bayramli and Qiuchang Li and Xunchu Zhou and Yue Ding and Hongtao Lu},
journal= {arXiv preprint arXiv:2606.31919},
year = {2026}
}