Real-Time Human Pose Estimation on a Smart Walker using Convolutional Neural Networks
Manuel Palermo, Sara Moccia, Lucia Migliorelli, Emanuele Frontoni,, Cristina P. Santos

TL;DR
This paper introduces a real-time, full-body pose estimation framework using RGB+D cameras on a smart walker, enabling improved patient monitoring and human-in-the-loop control in rehabilitation settings.
Contribution
It presents a novel two-stage neural network approach for 3D human pose estimation from multiple camera views on a smart walker, with real-time performance on constrained hardware.
Findings
Achieved 3.73 pixel error in 2D keypoint detection.
Reported 44.05mm accuracy in 3D pose estimation.
Inference time of 26.6ms on embedded hardware.
Abstract
Rehabilitation is important to improve quality of life for mobility-impaired patients. Smart walkers are a commonly used solution that should embed automatic and objective tools for data-driven human-in-the-loop control and monitoring. However, present solutions focus on extracting few specific metrics from dedicated sensors with no unified full-body approach. We investigate a general, real-time, full-body pose estimation framework based on two RGB+D camera streams with non-overlapping views mounted on a smart walker equipment used in rehabilitation. Human keypoint estimation is performed using a two-stage neural network framework. The 2D-Stage implements a detection module that locates body keypoints in the 2D image frames. The 3D-Stage implements a regression module that lifts and relates the detected keypoints in both cameras to the 3D space relative to the walker. Model predictions…
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