CVMar 18, 2025

Validation of Human Pose Estimation and Human Mesh Recovery for Extracting Clinically Relevant Motion Data from Videos

arXiv:2503.14760v13 citationsh-index: 3
Originality Synthesis-oriented
AI Analysis

This work addresses the need for more accessible motion analysis tools in clinical settings, though it represents an incremental validation rather than a fundamental breakthrough.

This paper validated marker-less motion capture techniques (human pose estimation and human mesh recovery) against established clinical tools (IMUs and marker-based MoCap), finding they produce comparable kinematic results while reducing setup time and expertise requirements.

This work aims to discuss the current landscape of kinematic analysis tools, ranging from the state-of-the-art in sports biomechanics such as inertial measurement units (IMUs) and retroreflective marker-based optical motion capture (MoCap) to more novel approaches from the field of computing such as human pose estimation and human mesh recovery. Primarily, this comparative analysis aims to validate the use of marker-less MoCap techniques in a clinical setting by showing that these marker-less techniques are within a reasonable range for kinematics analysis compared to the more cumbersome and less portable state-of-the-art tools. Not only does marker-less motion capture using human pose estimation produce results in-line with the results of both the IMU and MoCap kinematics but also benefits from a reduced set-up time and reduced practical knowledge and expertise to set up. Overall, while there is still room for improvement when it comes to the quality of the data produced, we believe that this compromise is within the room of error that these low-speed actions that are used in small clinical tests.

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