Abstract
The short-term prediction of a person’s trajectory during normal walking becomes necessary in many environments shared by humans and robots. Physics-based approaches based on Newton’s laws of motion seem best suited for short-term predictions, but the intrinsic properties of human walking conflict with the foundations of the basic kinematical models compromising their performance. In this paper, we propose a short-time prediction method based on gait biomechanics for real-time applications. This method relays on a single biomechanical variable, and it has a low computational burden, turning it into a feasible solution to implement in low-cost portable devices. We evaluate its performance from an experimental benchmark where several subjects walked steadily over straight and curved paths. With this approach, the results indicate a performance good enough to be applicable to a wide range of human–robot interaction applications.
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CITATION STYLE
González, L., López, A. M., Álvarez, J. C., & Álvarez, D. (2022). Real-Time Short-Term Pedestrian Trajectory Prediction Based on Gait Biomechanics. Sensors, 22(15). https://doi.org/10.3390/s22155828
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