Data Fusion Mathematics: Theory and Practice offers a comprehensive overview of data fusion (DF) and provides a proper and adequate understanding of the basic mathematics directly related to DF.
The new edition offers updated chapters alongside four brand new chapters that are based on recent research carried out by the authors, including topics on machine learning techniques, target localisation using a network of 2D ground radar, thermal imaging sensors for multi-target angle only tracking, and multisensor data fusion for single platform and team platforms. This book also covers major mathematical expressions, formulae and equations and, where feasible, their derivations. It discusses signed distance function concepts, DF models and architectures, aspects and methods of type 1 and 2 fuzzy logics, and related practical applications. In addition, the authors cover soft computing paradigms that are finding increasing applications in multisensory DF approaches and applications.
This text is geared toward researchers, scientists, teachers and practicing engineers interested and working in the multisensor data fusion area.
1. Introduction to Data Fusion Process 2. Statistics, Probability Models and Reliability–Towards Probabilistic Data Fusion 3. Fuzzy Logic and Possibility Theory based Fusion 4. Filtering, Target-Tracking and Kinematic Data Fusion 5. Decentralized Data Fusion Systems 6. Component Analysis and Data Fusion 7. Image Algebra and Image Fusion 8. Decision Theory and fusion 9. Wireless sensor networks and multimodal data fusion 10. Soft computing approaches to data fusion Machine Learning in Data Fusion 11. Machine Learning in Data Fusion 12. Target Localisation using Network of 2D Ground Radars 13. Multi-Target Angle Only Tracking using Thermal Imaging Sensors 14. Multi Sensor Data Fusion for Single Platform and Team of Platforms
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