Patient-Specific Pose Estimation in Clinical Environments

IEEE J Transl Eng Health Med. 2018 Oct 10:6:2101111. doi: 10.1109/JTEHM.2018.2875464. eCollection 2018.

Abstract

Reliable posture labels in hospital environments can augment research studies on neural correlates to natural behaviors and clinical applications that monitor patient activity. However, many existing pose estimation frameworks are not calibrated for these unpredictable settings. In this paper, we propose a semi-automated approach for improving upper-body pose estimation in noisy clinical environments, whereby we adapt and build around an existing joint tracking framework to improve its robustness to environmental uncertainties. The proposed framework uses subject-specific convolutional neural network models trained on a subset of a patient's RGB video recording chosen to maximize the feature variance of each joint. Furthermore, by compensating for scene lighting changes and by refining the predicted joint trajectories through a Kalman filter with fitted noise parameters, the extended system yields more consistent and accurate posture annotations when compared with the two state-of-the-art generalized pose tracking algorithms for three hospital patients recorded in two research clinics.

Keywords: Clinical environments; Kalman filter; convolutional neural networks; patient monitoring; pose estimation.

Grants and funding

This work was supported in part by the Hellman Fellowship, the UCSD ECE Department Medical Devices & Systems Initiative, the UCSD Centers for Human Brain Activity Mapping (CHBAM) and Brain Activity Mapping (CBAM), the UCSD Frontiers of Innovation Scholars Program, and the Qualcomm Institute Calit2 Strategic Research Opportunities (CSRO) Program.