Sit-to-stand analysis in the wild using silhouettes for longitudinal health monitoring

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Abstract

We present the first fully automated Sit-to-Stand or Stand-to-Sit (StS) analysis framework for long-term monitoring of patients in free-living environments using video silhouettes. Our method adopts a coarse-to-fine time localisation approach, where a deep learning classifier identifies possible StS sequences from silhouettes, and a smart peak detection stage provides fine localisation based on 3D bounding boxes. We tested our method on data from real homes of participants and monitored patients undergoing total hip or knee replacement. Our results show 94.4% overall accuracy in the coarse localisation and an error of 0.026 m/s in the speed of ascent measurement, highlighting important trends in the recuperation of patients who underwent surgery.

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Masullo, A., Burghardt, T., Perrett, T., Damen, D., & Mirmehdi, M. (2019). Sit-to-stand analysis in the wild using silhouettes for longitudinal health monitoring. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 11663 LNCS, pp. 175–185). Springer Verlag. https://doi.org/10.1007/978-3-030-27272-2_15

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