TL;DR
AnyPos introduces a task-agnostic, data-driven approach to robot manipulation that enhances generalization and success rates across diverse tasks by decoupling embodiment dynamics from high-level policies.
Contribution
It presents a novel embodiment modeling method using large-scale exploration and inverse dynamics, enabling scalable reuse of data across tasks and platforms.
Findings
Achieves 51% improvement in test accuracy over baseline.
Raises success rates by 30-40% on various manipulation tasks.
Enables scalable, safe trajectory generation for diverse tasks.
Abstract
Learning generalizable manipulation policies hinges on data, yet robot manipulation data is scarce and often entangled with specific embodiments, making both cross-task and cross-platform transfer difficult. We tackle this challenge with task-agnostic embodiment modeling, which learns embodiment dynamics directly from task-agnostic action data and decouples them from high-level policy learning. By focusing on exploring all feasible actions of the embodiment to capture what is physically feasible and consistent, task-agnostic data takes the form of independent image-action pairs with the potential to cover the entire embodiment workspace, unlike task-specific data, which is sequential and tied to concrete tasks. This data-driven perspective bypasses the limitations of traditional dynamics-based modeling and enables scalable reuse of action data across different tasks. Building on this…
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