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human-modelling-framework

v0.1.3

Published

Human sensorimotor control modelling framework based on Markkula et al's paper (DOI: 10.1007/s00422-017-0743-9)

Readme

Introduction

human-modelling-framework is a JavaScript/TypeScript library based on the human sensorimotor control modelling framework described in [1]. The driver model can be created by using the different classes implemented in the library. The most simple case would implement a single accumulator branch where the input would be a perceptual cue. You will have to tune the perceptual quantity received and predicted by assigning a Pp and a Pr object to the accumulator branch.

One example can be found on [2]. In the example, two accumulator branches are implemented and a linking function (see Link class) manages the interface between both branches.

Installation

To use the library directly in your application, you can use the NPM registry.

npm i human-modelling-framework

Final notes

You are welcome to fork the GitHub repository if you would like to extend this library.