Abstract

The study of joint kinematics and dynamics has broad clinical applications, including the identification of pathological motions or compensation strategies and the analysis of dynamic stability. High-end motion capture systems, however, are expensive and require dedicated camera spaces with lengthy setup and data processing commitments. Depth cameras, such as the Microsoft Kinect, provide an inexpensive, marker-free alternative at the sacrifice of joint-position accuracy. In this work, we present a fast framework for adding biomechanical constraints to the joint estimates provided by a depth camera system. We also present a new model for the lower lumbar joint angle. We validate key joint position, angle, and velocity measurements against a gold standard active motion-capture system on ten healthy subjects performing sit to stand (STS). Our method showed significant improvement in mean absolute error and intraclass correlation coefficients for the recovered joint angles and position-based metrics. These improvements suggest that depth cameras can provide an accurate and clinically viable method of rapidly assessing the kinematics and kinetics of the STS action, providing data for further analysis using biomechanical or machine learning methods.

Highlights

  • M USCULOSKELETAL disorders of the spine and knee lead to approximately 39 million visits to clinical care facilities each year in the United States [1]

  • mean absolute error (MAE), CCC, and ICC statistics are given for joint center positions (Table I), joint trajectories (Table II), velocity trajectories (Table III), and selected peak metrics (Table IV)

  • This work presents a framework for improving kinematic recovery from depth-camera data through the use of rigidbody modelling

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Summary

Introduction

M USCULOSKELETAL disorders of the spine and knee lead to approximately 39 million visits to clinical care facilities each year in the United States [1]. (Robert Peter Matthew and Sarah Seko contributed to this work.) (Corresponding author: Robert Peter Matthew.). This paper has supplementary downloadable material available at http://ieeexplore.ieee.org, provided by the authors. This includes an MP4 format movie clip, which compares the raw and processed depth-camera data against active motion capture.

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