Particle Filters for Random Set Models

  • 0 Ratings
  • 0 Want to read
  • 0 Currently reading
  • 0 Have read
Not in Library

My Reading Lists:

Create a new list

Check-In

×Close
Add an optional check-in date. Check-in dates are used to track yearly reading goals.
Today

  • 0 Ratings
  • 0 Want to read
  • 0 Currently reading
  • 0 Have read


Download Options

Buy this book

Last edited by MARC Bot
July 6, 2019 | History

Particle Filters for Random Set Models

  • 0 Ratings
  • 0 Want to read
  • 0 Currently reading
  • 0 Have read

“Particle Filters for Random Set Models” presents coverage of state estimation of stochastic dynamic systems from noisy measurements, specifically sequential Bayesian estimation and nonlinear or stochastic filtering. The class of solutions presented in this book is based on the Monte Carlo statistical method. The resulting algorithms, known as particle filters, in the last decade have become one of the essential tools for stochastic filtering, with applications ranging from navigation and autonomous vehicles to bio-informatics and finance. While particle filters have been around for more than a decade, the recent theoretical developments of sequential Bayesian estimation in the framework of random set theory have provided new opportunities which are not widely known and are covered in this book. These recent developments have dramatically widened the scope of applications, from single to multiple appearing/disappearing objects, from precise to imprecise measurements and measurement models. This book is ideal for graduate students, researchers, scientists and engineers interested in Bayesian estimation.

Publish Date
Language
English
Pages
174

Buy this book

Previews available in: English

Edition Availability
Cover of: Particle Filters for Random Set Models
Particle Filters for Random Set Models
May 22, 2015, Springer
paperback
Cover of: Particle Filters for Random Set Models
Particle Filters for Random Set Models
2013, Springer New York, Imprint: Springer
electronic resource / in English

Add another edition?

Book Details


Table of Contents

Introduction
References
Background
A brief review of particle filters
Online sensor control
Non-standard measurements
Imprecise measurements
Imprecise measurement function
Uncertain implication rules
Particle filter implementation
Applications
Multiple objects and imperfect detection
Random finite sets
Multi-object stochastic filtering
OSPA metric
Specialized multi-object filters
Bernoulli filter
PHD and CPHD filter
References
Applications involving non-standard measurements
Estimation using imprecise measurement models
Localization using the received signal strength
Prediction of an epidemic using syndromic data
Summary
Fusion of spatially referring natural language statements
Language, space and modelling
An illustrative example
Classification using imprecise likelihoods
Modelling
Classification results
References
object particle filters
Bernoulli particle filters
^
Standard Bernoulli particle filters
Bernoulli box-particle filter
PHD/CPDH particle filters with adaptive birth intensity
Extension of the PHD filter
Extension of the CPHD filter
Implementation
A numerical study
State estimation from PHD/CPHD particle filters
Particle filter approximation of the exact multi-object filter
References
Sensor control for random set based particle filters
Bernoulli particle filter with sensor control
The reward function
Bearings only tracking in clutter with observer control
Target Tracking via Multi-Static Doppler Shifts
Sensor control for PHD/CPHD particle filters
The reward function
A numerical study
Sensor control for the multi-target state particle filter
Particle approximation of the reward function
A numerical study
References
Multi-target tracking
OSPA-T: A performance metric for multi-target tracking
The problem and its conceptual solution
^
^^
The base distance and labeling of estimated tracks
Numerical examples
Trackers based on random set filters
Multi-target trackers based on the Bernoulli PF
Multi-target trackers based on the PHD particle filter
Error performance comparison using the OSPA-T error
Application: Pedestrian tracking
Video dataset and detections
Description of Algorithms
Numerical results
References
Advanced topics
Filter for extended target tracking
Mathematical models
Equations of the Bernoulli filter for an extended target
Numerical Implementation
Simulation results
Application to a surveillance video
Calibration of tracking systems
Background and problem formulation
The proposed calibration algorithm
Importance sampling with progressive correction
Application to sensor bias estimation
References
Index.
^^

Edition Notes

Published in
New York, NY

Classifications

Dewey Decimal Class
621.382
Library of Congress
TK5102.9, TA1637-1638, TK7882.S65, TA1-2040

The Physical Object

Format
[electronic resource] /
Pagination
XIV, 174 p. 52 illus., 41 illus. in color.
Number of pages
174

ID Numbers

Open Library
OL27079832M
Internet Archive
particlefiltersf00rist
ISBN 13
9781461463160

Community Reviews (0)

Feedback?
No community reviews have been submitted for this work.

Lists

This work does not appear on any lists.

History

Download catalog record: RDF / JSON
July 6, 2019 Created by MARC Bot import new book