Motor learning through the combination of primitives
- 29 December 2000
- journal article
- Published by The Royal Society in Philosophical Transactions Of The Royal Society B-Biological Sciences
- Vol. 355 (1404), 1755-1769
- https://doi.org/10.1098/rstb.2000.0733
Abstract
In this paper we discuss a new perspective on how the central nervous system (CNS) represents and solves some of the most fundamental computational problems of motor control. In particular, we consider the task of transforming a planned limb movement into an adequate set of motor commands. Tocarry out this task the CNS must solve a complex inverse dynamic problem. This problem involves the transformation from a desired motion to the forces that are needed to drive the limb. The inverse dynamic problem is a hard computational challenge because of the need to coordinate multiple limb segments and because of the continuous changes in the mechanical properties of the limbs and of the environment with which they come in contact. A number of studies of motor learning have provided support for the idea that the CNS creates, updates and exploits internal representations of limb dynamics in order to deal with the complexity of inverse dynamics. Here we discuss how such internal representations are likely to be built by combining the modular primitives in the spinal cord as well as other building blocks found in higher brain structures. Experimental studies on spinalized frogs and rats have led to the conclusion that the premotor circuits within the spinal cord are organized into a set of discrete modules. Each module, when activated, induces a specific force field and the simultaneous activation of multiple modules leads to the vectorial combination of the corresponding fields. We regard these force fields as computational primitives that are used by the CNS for generating a rich grammar of motor behaviours.Keywords
This publication has 57 references indexed in Scilit:
- Reference frames and internal models for visuo-manual coordination: what can we learn from microgravity experiments?Brain Research Reviews, 1998
- The Time Course of Changes during Motor Sequence Learning: A Whole-Brain fMRI StudyNeuroImage, 1998
- Forward Models for Physiological Motor ControlNeural Networks, 1996
- Virtual trajectory and stiffness ellipse during multijoint arm movement predicted by neural inverse modelsBiological Cybernetics, 1993
- Computations Underlying the Execution of Movement: A Biological PerspectiveScience, 1991
- Regularization Algorithms for Learning That Are Equivalent to Multilayer NetworksScience, 1990
- Manipulator control using the configuration space methodIndustrial Robot: the international journal of robotics research and application, 1978
- How we control the contraction of our musclesScientific American, 1972
- A theory of cerebellar functionMathematical Biosciences, 1971
- Slowly Adapting Muscle Receptors in ManActa Physiologica Scandinavica, 1970