Machine Learning for Optical Motion Capture-driven Musculoskeletal
Modeling from Inertial Motion Capture Data
- URL: http://arxiv.org/abs/2209.14456v1
- Date: Wed, 28 Sep 2022 22:50:46 GMT
- Title: Machine Learning for Optical Motion Capture-driven Musculoskeletal
Modeling from Inertial Motion Capture Data
- Authors: Abhishek Dasgupta, Rahul Sharma, Challenger Mishra, Vikranth H.
Nagaraja
- Abstract summary: We present an ML approach to map IMC data to the human upper-extremity MSK outputs computed from OMC input data.
This approach will be instrumental in getting the technology from 'lab to field' where OMC-based systems are infeasible.
- Score: 1.388356501859891
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Marker-based Optical Motion Capture (OMC) systems and the associated
musculoskeletal (MSK) modeling predictions have offered the ability to gain
insights into in vivo joint and muscle loading non-invasively as well as aid
clinical decision-making. However, an OMC system is lab-based, expensive, and
requires a line of sight. A widely used alternative is the Inertial Motion
Capture (IMC) system, which is portable, user-friendly, and relatively low
cost, although it is not as accurate as an OMC system. Irrespective of the
choice of motion capture technique, one needs to use an MSK model to obtain the
kinematic and kinetic outputs, which is a computationally expensive tool
increasingly well approximated by machine learning (ML) methods. Here, we
present an ML approach to map IMC data to the human upper-extremity MSK outputs
computed from OMC input data. Essentially, we attempt to predict high-quality
MSK outputs from the relatively easier-to-obtain IMC data. We use OMC and IMC
data simultaneously collected for the same subjects to train an ML
(feed-forward multi-layer perceptron) model that predicts OMC-based MSK outputs
from IMC measurements. We demonstrate that our ML predictions have a high
degree of agreement with the desired OMC-based MSK estimates. Thus, this
approach will be instrumental in getting the technology from 'lab to field'
where OMC-based systems are infeasible.
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