Multi-Sensor Data Fusion with MATLAB
Auteur : Raol Jitendra R.
Using MATLAB® examples wherever possible, Multi-Sensor Data Fusion with MATLAB explores the three levels of multi-sensor data fusion (MSDF): kinematic-level fusion, including the theory of DF; fuzzy logic and decision fusion; and pixel- and feature-level image fusion. The authors elucidate DF strategies, algorithms, and performance evaluation mainly for aerospace applications, although the methods can also be applied to systems in other areas, such as biomedicine, military defense, and environmental engineering.
After presenting several useful strategies and algorithms for DF and tracking performance, the book evaluates DF algorithms, software, and systems. It next covers fuzzy logic, fuzzy sets and their properties, fuzzy logic operators, fuzzy propositions/rule-based systems, an inference engine, and defuzzification methods. It develops a new MATLAB graphical user interface for evaluating fuzzy implication functions, before using fuzzy logic to estimate the unknown states of a dynamic system by processing sensor data. The book then employs principal component analysis, spatial frequency, and wavelet-based image fusion algorithms for the fusion of image data from sensors. It also presents procedures for combing tracks obtained from imaging sensor and ground-based radar. The final chapters discuss how DF is applied to mobile intelligent autonomous systems and intelligent monitoring systems.
Fusing sensors? data can lead to numerous benefits in a system?s performance. Through real-world examples and the evaluation of algorithmic results, this detailed book provides an understanding of MSDF concepts and methods from a practical point of view.
Select MATLAB programs are available for download on www.crcpress.com
Theory of Data Fusion and Kinematic-Level Fusion. Fuzzy Logic and Decision Fusion. Pixel and Feature-Level Image Fusion. A Brief on Data Fusion in Other Systems. Appendix. Index.
Jitendra R. Raol is Professor Emeritus at M S Ramaiah Institute of Technology (MSRIT) in Bangalore, India.
Date de parution : 01-2010
Ouvrage de 534 p.
15.2x22.9 cm
Thèmes de Multi-Sensor Data Fusion with MATLAB :
Mots-clés :
SVF; Multi-Sensor Data Fusion; decision; DF; artifi; MSDF; cial; Decision Fusion; neural; Membership Functions; networks; Kalman Filters; state; Image Fusion; vector; Implication Methods; kalman; Fuzzy Implication; filter; Fusion Rules; lter; Air Lane; Artifi Cial Neural Networks; Measurement Noise Covariance; IMM; EKF; Pixel Level Fusion; CA Model; Mobile Robots; Defuzzifi Cation; Process Noise Covariance; Data Fusion Process; Process Noise Variance; JDL Model; DF System