A comparative study of pose representation and dynamics modelling for online motion quality assessment
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Quantitative assessment of the quality of motion is increasingly in demand by clinicians in healthcare and rehabilitation monitoring of patients. We study and compare the performances of different pose representations and HMM models of dynamics of movement for online quality assessment of human motion. In a general sense, our assessment framework builds a model of normal human motion from skeleton-based samples of healthy individuals. It encapsulates the dynamics of human body pose using robust manifold representation and a first-order Markovian assumption. We then assess deviations from it via a continuous online measure. We compare different feature representations, reduced dimensionality spaces, and HMM models on motions typically tested in clinical settings, such as gait on stairs and flat surfaces, and transitions between sitting and standing. Our dataset is manually labelled by a qualified physiotherapist. The continuous-state HMM, combined with pose representation based on body-joints’ location, outperforms standard discrete-state HMM approaches and other skeleton-based features in detecting gait abnormalities, as well as assessing deviations from the motion model on a frame-by-frame basis.
论文关键词:Human motion quality,Human motion assessment,Continuous-state HMM motion analysis,Motion abnormality detection
论文评审过程:Received 28 March 2015, Revised 26 September 2015, Accepted 28 November 2015, Available online 27 May 2016, Version of Record 27 May 2016.
论文官网地址:https://doi.org/10.1016/j.cviu.2015.11.016