Target-Specific Action Classification for Automated Assessment of Human Motor Behavior from Video
Behnaz Rezaei, Yiorgos Christakis, Bryan Ho, Kevin Thomas, Kelley Erb,, Sarah Ostadabbas, Shyamal Patel

TL;DR
This paper introduces a hierarchical vision-based method utilizing pose tracking and deep learning to classify human actions in videos, addressing challenges like multiple actors and changing environments, with high accuracy.
Contribution
It presents a novel cascaded pose tracker combined with pose evolution maps for effective action classification in complex, untrimmed videos using a single RGB camera.
Findings
Pose tracker achieves 88% accuracy in tracking
System achieves 84% accuracy in action classification
Method handles multiple actors and environmental changes
Abstract
Objective monitoring and assessment of human motor behavior can improve the diagnosis and management of several medical conditions. Over the past decade, significant advances have been made in the use of wearable technology for continuously monitoring human motor behavior in free-living conditions. However, wearable technology remains ill-suited for applications which require monitoring and interpretation of complex motor behaviors (e.g. involving interactions with the environment). Recent advances in computer vision and deep learning have opened up new possibilities for extracting information from video recordings. In this paper, we present a hierarchical vision-based behavior phenotyping method for classification of basic human actions in video recordings performed using a single RGB camera. Our method addresses challenges associated with tracking multiple human actors and…
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