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arxiv: 1503.01631 · v1 · pith:SXZZPOKBnew · submitted 2015-03-05 · 📊 stat.CO

Application of Sequential Quasi-Monte Carlo to Autonomous Positioning

classification 📊 stat.CO
keywords carlosequentialautonomouspositioningquasi-monteratesqmcalgorithms
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Sequential Monte Carlo algorithms (also known as particle filters) are popular methods to approximate filtering (and related) distributions of state-space models. However, they converge at the slow $1/\sqrt{N}$ rate, which may be an issue in real-time data-intensive scenarios. We give a brief outline of SQMC (Sequential Quasi-Monte Carlo), a variant of SMC based on low-discrepancy point sets proposed by Gerber and Chopin (2015), which converges at a faster rate, and we illustrate the greater performance of SQMC on autonomous positioning problems.

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