Abstract
Trajectory reconstruction is the process of inferring the path of a moving object between successive observations. In this paper, we propose a smoothing spline—which we name the V-spline— that incorporates position and velocity information and a penalty term that controls acceleration. We introduce an adaptive V-spline designed to control the impact of irregularly sampled observations and noisy velocity measurements. A cross-validation scheme for estimating the V-spline parameters is proposed, and, in simulation studies, the V-spline shows superior performance to existing methods. Finally, an application of the V-spline to vehicle trajectory reconstruction in two dimensions is given, in which the penalty term is allowed to further depend on known operational characteristics of the vehicle.
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Cao, Z., Bryant, D., Molteno, T. C. A., Fox, C., & Parry, M. (2021). V-spline: An adaptive smoothing spline for trajectory reconstruction. Sensors, 21(9). https://doi.org/10.3390/s21093215
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