Particle Filter

Particle Filter

by Fouad Sabry
Epub (Kobo), Epub (Adobe)
Publication Date: 16/05/2024

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What is Particle Filter


Particle filters, or sequential Monte Carlo methods, are a set of Monte Carlo algorithms used to find approximate solutions for filtering problems for nonlinear state-space systems, such as signal processing and Bayesian statistical inference. The filtering problem consists of estimating the internal states in dynamical systems when partial observations are made and random perturbations are present in the sensors as well as in the dynamical system. The objective is to compute the posterior distributions of the states of a Markov process, given the noisy and partial observations. The term "particle filters" was first coined in 1996 by Pierre Del Moral about mean-field interacting particle methods used in fluid mechanics since the beginning of the 1960s. The term "Sequential Monte Carlo" was coined by Jun S. Liu and Rong Chen in 1998.


How you will benefit


(I) Insights, and validations about the following topics:


Chapter 1: Particle filter


Chapter 2: Importance sampling


Chapter 3: Point process


Chapter 4: Fokker-Planck equation


Chapter 5: Wiener's lemma


Chapter 6: Klein-Kramers equation


Chapter 7: Mean-field particle methods


Chapter 8: Dirichlet kernel


Chapter 9: Generalized Pareto distribution


Chapter 10: Superprocess


(II) Answering the public top questions about particle filter.


(III) Real world examples for the usage of particle filter in many fields.


Who this book is for


Professionals, undergraduate and graduate students, enthusiasts, hobbyists, and those who want to go beyond basic knowledge or information for any kind of Particle Filter.

ISBN:
6610000571116
6610000571116
Category:
Computer vision
Format:
Epub (Kobo), Epub (Adobe)
Publication Date:
16-05-2024
Language:
English
Publisher:
One Billion Knowledgeable

This item is delivered digitally

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