MaskedManipulator: Versatile Whole-Body Control for Loco-Manipulation
- URL: http://arxiv.org/abs/2505.19086v1
- Date: Sun, 25 May 2025 10:46:14 GMT
- Title: MaskedManipulator: Versatile Whole-Body Control for Loco-Manipulation
- Authors: Chen Tessler, Yifeng Jiang, Erwin Coumans, Zhengyi Luo, Gal Chechik, Xue Bin Peng,
- Abstract summary: Humans interact with their world while leveraging precise full-body control to achieve versatile goals.<n>Such goal-driven control can enable new procedural tools for animation systems.<n>We present MaskedManipulator, which provides intuitive control over both the character's body and the manipulated object.
- Score: 37.01301771363411
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Humans interact with their world while leveraging precise full-body control to achieve versatile goals. This versatility allows them to solve long-horizon, underspecified problems, such as placing a cup in a sink, by seamlessly sequencing actions like approaching the cup, grasping, transporting it, and finally placing it in the sink. Such goal-driven control can enable new procedural tools for animation systems, enabling users to define partial objectives while the system naturally ``fills in'' the intermediate motions. However, while current methods for whole-body dexterous manipulation in physics-based animation achieve success in specific interaction tasks, they typically employ control paradigms (e.g., detailed kinematic motion tracking, continuous object trajectory following, or direct VR teleoperation) that offer limited versatility for high-level goal specification across the entire coupled human-object system. To bridge this gap, we present MaskedManipulator, a unified and generative policy developed through a two-stage learning approach. First, our system trains a tracking controller to physically reconstruct complex human-object interactions from large-scale human mocap datasets. This tracking controller is then distilled into MaskedManipulator, which provides users with intuitive control over both the character's body and the manipulated object. As a result, MaskedManipulator enables users to specify complex loco-manipulation tasks through intuitive high-level objectives (e.g., target object poses, key character stances), and MaskedManipulator then synthesizes the necessary full-body actions for a physically simulated humanoid to achieve these goals, paving the way for more interactive and life-like virtual characters.
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