Home /Research /Adaptive Compliance Policy: Learning Approximate Compliance for Diffusion Guided Control
MANIPULATION

Adaptive Compliance Policy: Learning Approximate Compliance for Diffusion Guided Control

YiFan Hou, Zeyi Liu, Cheng Chi, Eric Cousineau, Naveen Kuppuswamy, Siyuan Feng, Benjamin Burchfiel, Shuran Song

Year
2025
Citations
13

Abstract

Compliance plays a crucial role in manipulation, as it balances between the concurrent control of position and force under uncertainties. Yet compliance is often overlooked by today's visuomotor policies that solely focus on position control. This paper introduces Adaptive Compliance Policy (ACP), a novel framework that learns to dynamically adjust system com-pliance both spatially and temporally for given manipulation tasks from human demonstrations, improving upon previous approaches that rely on pre-selected compliance parameters or assume uniform constant stiffness. However, computing full compliance parameters from human demonstrations is an ill- defined problem. Instead, we estimate an approximate compli-ance profile with two useful properties: avoiding large contact forces and encouraging accurate tracking. Our approach en-ables robots to handle complex contact-rich manipulation tasks and achieves over 50% performance improvement compared to state-of-the-art visuomotor policy methods. Project website with result videos: adaptive-compliance.github.io.

Keywords

Compliance (psychology)Computer scienceAdaptive controlDiffusionControl (management)Artificial intelligencePsychologyPhysicsThermodynamics

Related papers

Browse all MANIPULATION papers