Deep kinematic inference affords efficient and scalable control of bodily movements

Proc Natl Acad Sci U S A. 2023 Dec 19;120(51):e2309058120. doi: 10.1073/pnas.2309058120. Epub 2023 Dec 12.

Abstract

Performing goal-directed movements requires mapping goals from extrinsic (workspace-relative) to intrinsic (body-relative) coordinates and then to motor signals. Mainstream approaches based on optimal control realize the mappings by minimizing cost functions, which is computationally demanding. Instead, active inference uses generative models to produce sensory predictions, which allows a cheaper inversion to the motor signals. However, devising generative models to control complex kinematic chains like the human body is challenging. We introduce an active inference architecture that affords a simple but effective mapping from extrinsic to intrinsic coordinates via inference and easily scales up to drive complex kinematic chains. Rich goals can be specified in both intrinsic and extrinsic coordinates using attractive or repulsive forces. The proposed model reproduces sophisticated bodily movements and paves the way for computationally efficient and biologically plausible control of actuated systems.

Keywords: active inference; kinematics; motor control; neurocomputational modeling; predictive coding.

MeSH terms

  • Algorithms*
  • Biomechanical Phenomena
  • Humans
  • Motivation
  • Movement*