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"Intuitive understanding of Kalman filtering with MATLAB"/ by Armando Barreto and et al.

Contributor(s): Material type: TextTextPublication details: CRC Press, Boca Raton, FL: 2021Edition: 1st edDescription: xviii, 229 p.: ill.; 23 cmISBN:
  • 9780367191337
Subject(s): DDC classification:
  • 006.42 23 BAI
Contents:
Part I Background
Chapter 1 System Models and Random Variables 3
Chapter 2 Multiple Random Sequences
Chapter 3 Conditional Probability, Bayes' Rule and Bayesian Estimation 45
Part II Where Does Kalman Filtering Apply and What Does It Intend to Do?
Chapter 4 A Simple Scenario Where Kalman
Chapter 5 General Scenario Addressed by Kalman Filtering and Specific Cases 61
Chapter 6 Arriving at the Kalman Filter Algorithm 75
Chapter 7 Reflecting on the Meaning and Evolution of the Entities in the Kalman Filter Algorithm 87
Part III Examples in MATLAB®
Chapter 8 MATLAB® Function to Implement and Exemplify the Kalman Filter 103
Chapter 9 Univariate Example of Kalman Filter in MATLAB® 113
Chapter 10 Multivariate Example of Kalman Filter in MATLAB® 131
Part IV Kalman Filtering Application to IMUs
Chapter 11 Kalman Filtering Applied to 2-Axis Attitude Estimation from Real IMU Signals 153
Chapter 12 Real-Time Kalman Filtering Application to Attitude Estimation from IMU Signals 179
Summary: The emergence of affordable micro sensors, such as MEMS Inertial Measurement Systems, which are being applied in embedded systems and Internet-of-Things devices, has brought techniques such as Kalman Filtering, capable of combining information from multiple sensors or sources, to the interest of students and hobbyists.
Item type: Books List(s) this item appears in: Computer Science & Engineering | New Arrival Book 2023
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Holdings
Item type Current library Collection Shelving location Call number Copy number Status Date due Barcode
Books Books KU Central Library Rack No. : 01 Annex : 01 Shelve No. : A-02 Reference Section (Non-Issuable Books) 006.42 BAI 2021 (Browse shelf(Opens below)) C-1 (NI) Not For Loan 52089

Includes bibliographical references and indexes.



Part I Background

Chapter 1 System Models and Random Variables 3

Chapter 2 Multiple Random Sequences

Chapter 3 Conditional Probability, Bayes' Rule and Bayesian Estimation 45

Part II Where Does Kalman Filtering Apply and What Does It Intend to Do?

Chapter 4 A Simple Scenario Where Kalman

Chapter 5 General Scenario Addressed by Kalman Filtering and Specific Cases 61

Chapter 6 Arriving at the Kalman Filter Algorithm 75

Chapter 7 Reflecting on the Meaning and Evolution of the Entities in the Kalman Filter Algorithm 87

Part III Examples in MATLAB®

Chapter 8 MATLAB® Function to Implement and Exemplify the Kalman Filter 103

Chapter 9 Univariate Example of Kalman Filter in MATLAB® 113

Chapter 10 Multivariate Example of Kalman Filter in MATLAB® 131

Part IV Kalman Filtering Application to IMUs

Chapter 11 Kalman Filtering Applied to 2-Axis Attitude Estimation from Real IMU Signals 153

Chapter 12 Real-Time Kalman Filtering Application to Attitude Estimation from IMU Signals 179

The emergence of affordable micro sensors, such as MEMS Inertial Measurement Systems, which are being applied in embedded systems and Internet-of-Things devices, has brought techniques such as Kalman Filtering, capable of combining information from multiple sensors or sources, to the interest of students and hobbyists.

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