''Multisource information fusion has become a crucial technique in areas such as sensor networks, space technology, air traffic control, military engineering, communications, industrial control, agriculture, and environmental engineering. Exploring recent signficant results, this book presents essen
Multisensor Decision And Estimation Fusion
β Scribed by Yunmin Zhu (auth.)
- Publisher
- Springer US
- Year
- 2003
- Tongue
- English
- Leaves
- 247
- Series
- The International Series on Asian Studies in Computer and Information Science 14
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
YUNMIN ZHU In the past two decades, multi sensor or multi-source information fusion techΒ niques have attracted more and more attention in practice, where observations are processed in a distributed manner and decisions or estimates are made at the individual processors, and processed data (or compressed observations) are then transmitted to a fusion center where the final global decision or estimate is made. A system with multiple distributed sensors has many advantages over one with a single sensor. These include an increase in the capability, reliability, robustness and survivability of the system. Distributed decision or estimation fusion probΒ lems for cases with statistically independent observations or observation noises have received significant attention (see Varshney's book Distributed DetecΒ tion and Data Fusion, New York: Springer-Verlag, 1997, Bar-Shalom's book Multitarget-Multisensor Tracking: Advanced Applications, vol. 1-3, Artech House, 1990, 1992,2000). Problems with statistically dependent observations or observation noises are more difficult and have received much less study. In practice, however, one often sees decision or estimation fusion problems with statistically dependent observations or observation noises. For instance, when several sensors are used to detect a random signal in the presence of observation noise, the sensor observations could not be statistically independent when the signal is present. This book provides a more complete treatment of the fundamentals of multiΒ sensor decision and estimation fusion in order to deal with general random obΒ servations or observation noises that are correlated across the sensors.
β¦ Table of Contents
Front Matter....Pages i-xxi
Front Matter....Pages 1-1
Introduction....Pages 3-36
Two Sensor Binary Decision....Pages 37-62
Multisensor Binary Decision....Pages 63-99
Multisensor Multi-Hypothesis Network Decision....Pages 101-115
Optimal Fusion Rule and Design of Network Communication Structures....Pages 117-154
Front Matter....Pages 155-157
Multisensor Point Estimation Fusion....Pages 159-195
Multisensor Interval Estimation Fusion....Pages 197-225
Back Matter....Pages 227-236
β¦ Subjects
Electrical Engineering; Signal, Image and Speech Processing; Coding and Information Theory
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