LadderMan: Learning Humanoid Perceptive Ladder Climbing

arXiv:2606.0587391.4
AI Analysis

This work addresses the challenging problem of ladder climbing for humanoid robots, which is critical for deployment in human-centered environments, and demonstrates a unified system with robust real-world performance.

LadderMan enables humanoid robots to robustly climb diverse ladders and perform manipulation tasks under constrained conditions, achieving zero-shot sim-to-real transfer and supporting various manipulation tasks.

Humanoid robots hold great promise for operating in human-centered environments, yet ladder climbing remains one of the most challenging tasks due to sparse footholds and handholds, complex whole-body coordination, and sensitivity to perception and control errors. We present \textbf{LadderMan}, a unified system that enables humanoid robots to robustly climb diverse ladders and perform manipulation under such constrained conditions. Our climbing policy is built on a scalable two-stage learning pipeline, where we use hybrid motion tracking to learn multiple climbing experts from a single reference motion, and distill these experts into a unified depth-based visuomotor climbing policy via hybrid imitation and reinforcement learning. To enable real-world deployment, we leverage vision foundation models to bridge the sim-to-real gap in depth perception. Building on the learned climbing policy, we further train a separate manipulation policy using a dual-agent formulation, allowing stable on-ladder manipulation via teleoperation. Experiments demonstrate that LadderMan achieves robust ladder climbing across a wide range of geometries, successfully transfers to real-world hardware in a zero-shot manner, and supports various manipulation tasks under challenging ladder constraints. Video results are available at https://ladderman-robot.github.io .

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