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Data Fusion : Concepts, Ideas and Deep Learning / by Harvey B. Mitchell.

Springer eBooks EBA - Intelligent Technologies and Robotics Collection 2026 Available online

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Format:
Book
Author/Creator:
Mitchell, Harvey B.
Series:
Intelligent Technologies and Robotics Series
Language:
English
Subjects (All):
Engineering--Data processing.
Engineering.
Signal processing.
Computational intelligence.
Electronics.
Data Engineering.
Digital and Analog Signal Processing.
Computational Intelligence.
Electronics and Microelectronics, Instrumentation.
Local Subjects:
Data Engineering.
Digital and Analog Signal Processing.
Computational Intelligence.
Electronics and Microelectronics, Instrumentation.
Physical Description:
1 online resource (623 pages)
Edition:
3rd ed. 2026.
Place of Publication:
Berlin, Heidelberg : Springer Berlin Heidelberg : Imprint: Springer, 2026.
Summary:
This textbook provides a comprehensive introduction to the concepts and ideas of data fusion. It is an extensively revised third edition of the author's book which was originally published by Springer-Verlag in 2007 (first edition) and 2012 (second edition). The main changes in the new edition are: NEW MATERIAL. A new chapter on Deep Learning and significant amounts of new material in most chapters in the book SOFTWARE CODE. Where appropriate we have given details of both Matlab and Python code which may be downloaded from the internet. FIGURES. More than 40 new figures have been added to the text. The book is intended to be self-contained. No previous knowledge of data fusion is assumed, although some familiarity with basic tools of linear algebra, calculus and simple probability is recommended. Although conceptually simple, the study of data fusion presents challenges that are unique within the education of the electrical engineer or computer scientist. To become competent in the field, the student must become familiar with tools taken from a wide range of diverse subjects including deep learning, signal processing, statistical estimation, tracking algorithms, computer vision and control theory. All too often, the student views data fusion as a miscellaneous assortment of different processes which bear no relationship to each other. In contrast, in this book the processes are unified by using a common statistical framework. As a consequence, the underlying pattern of relationships that exists between the different methodologies is made evident. The book is illustrated with many real-life examples taken from a diverse range of applications and contains an extensive list of modern references.
Contents:
1 Introduction
2 Sensors
3 Architecture
4 Common Representational Format
5 Deep Learning
6 Spatial Alignment
7 Temporal Alignment
8 Semantic Alignment
9 Radiometric Normalization
10 Bayesian Inference
11 Parameter Estimation
12 Robust Statistics
13 Sequential Bayesian Inference and Kalman Filters
14 Bayesian Decision Theory
15 EnsembleLearning
Index.
Notes:
Description based on publisher supplied metadata and other sources.
ISBN:
3-662-71023-4
9783662710234
OCLC:
1570559594

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