An open-source platform for human pose estimation and tracking using a heterogeneous multi-sensor system

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Abstract

Human pose estimation and tracking in real-time from multi-sensor systems is essential for many applications. Combining multiple heterogeneous sensors increases opportunities to improve human motion tracking. Using only a single sensor type, e.g., inertial sensors, human pose estimation accuracy is affected by sensor drift over longer periods. This paper proposes a human motion tracking system using lidar and inertial sensors to estimate 3D human pose in real-time. Human motion tracking includes human detection and estimation of height, skeletal parameters, position, and orientation by fusing lidar and inertial sensor data. Finally, the estimated data are reconstructed on a virtual 3D avatar. The proposed human pose tracking system was developed using open-source platform APIs. Experimental results verified the proposed human position tracking accuracy in real-time and were in good agreement with current multi-sensor systems.

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Patil, A. K., Balasubramanyam, A., Ryu, J. Y., Chakravarthi, B., & Chai, Y. H. (2021). An open-source platform for human pose estimation and tracking using a heterogeneous multi-sensor system. Sensors, 21(7). https://doi.org/10.3390/s21072340

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