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Human impedance modulation to improve visuo-haptic perception

  • Xiaoxiao Cheng
  • , Shixian Shen
  • , Ekaterina Ivanova
  • , Gerolamo Carboni
  • , Atsushi Takagi
  • , Etienne Burdet
  • Imperial College of Science, Technology and Medicine
  • Queen Mary University of London
  • NTT Communication Science Laboratories

Research output: Contribution to journalArticlepeer-review

Abstract

Humans activate muscles to shape the mechanical interaction with their environment, but can they harness this control mechanism to best sense the environment? We investigated how participants adapt their muscle activation to visual and haptic information when tracking a randomly moving target with a robotic interface. The results exhibit a differentiated effect of these sensory modalities, where participants' muscle coactivation increases with the haptic noise and decreases with the visual noise, in apparent contradiction to previous results. These results can be explained when considering muscle spring-like mechanics, where stiffness increases with coactivation to regulate motion guidance. Increasing coactivation to more closely follow the motion plan favors accurate visual over haptic information, while decreasing it filters visual noise and relies more on accurate haptic information. We formulated this active sensing mechanism as the optimization of visuo-haptic information and effort. This optimal information and effort (OIE) model can explain the adaptation of muscle activity to unimodal and multimodal sensory information when interacting with fixed or dynamic environments, or with another human, and can be used to optimize human-robot interaction.

Original languageEnglish
Article numbere1013042
JournalPLoS computational biology
Volume21
Issue number5
Early online date9 May 2025
DOIs
Publication statusE-pub ahead of print - 9 May 2025

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