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Intuitive Understanding of Kalman Filtering with MATLAB®
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Product Details
Author:
Armando Barreto, Malek Adjouadi, Francisco Ortega, Nonnarit O-larnnithipong
Format:
Paperback
Pages:
248
Publisher:
CRC Press (September 7, 2020)
Language:
English
ISBN-13:
9780367191337
Weight:
12.5oz
Dimensions:
6.125" x 9.1875"
File:
TAYLORFRANCIS-TayFran_260704045318152-20260704.xml
Folder:
TAYLORFRANCIS
List Price:
$84.99
Case Pack:
10
As low as:
$80.74
Publisher Identifier:
P-CRC
Discount Code:
H
Pub Discount:
30
Audience:
Professional and scholarly
Country of Origin:
United States
Imprint:
CRC Press
Overview
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. This will book will develop just the necessary background concepts, helping a much wider audience of readers develop an understanding and intuition that will enable them to follow the explanation for the Kalman Filtering algorithm








