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VR
2003
IEEE

An Experiment Comparing Double Exponential Smoothing and Kalman Filter-Based Predictive Tracking Algorithms

13 years 9 months ago
An Experiment Comparing Double Exponential Smoothing and Kalman Filter-Based Predictive Tracking Algorithms
We present an experiment comparing double exponential smoothing and Kalman filter-based predictive tracking algorithms with derivative free measurement models. Our results show that the double exponential smoothers run approximately 135 times faster with equivalent prediction performance. The paper briefly describes the algorithms used in the experiment and discusses the results. 1 Double Exponential Smoothing-Based Prediction Double exponential smoothing-based prediction (DESP) is a viable alternative to the more common Kalman filterbased predictors with derivative free motion models. DESP models a time series using a simple linear regression equation where the y-intercept and slope are varying slowly over time[1]. An unequal weighting is placed on these parameters that decays exponentially through time so newer observations get a higher weighting than older ones. The degree of exponential decay is determined by the parameter α ∈ [0, 1). To predict user position, we assume that...
Joseph J. LaViola Jr.
Added 05 Jul 2010
Updated 05 Jul 2010
Type Conference
Year 2003
Where VR
Authors Joseph J. LaViola Jr.
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