Foundations and Applications of Sensor Management [electronic resource] /edited by Alfred O. Hero, David A. Castañón, Douglas Cochran, Keith Kastella.
by Hero, Alfred O [editor.]; Castañón, David A [editor.]; Cochran, Douglas [editor.]; Kastella, Keith [editor.]; SpringerLink (Online service).
Material type:
Item type | Current location | Call number | Status | Date due | Barcode |
---|---|---|---|---|---|
TA1637-1638 (Browse shelf) | Available | ||||
TK7882.S65 (Browse shelf) | Available | ||||
Long Loan | MAIN LIBRARY | TK5102.9 (Browse shelf) | Available |
Close shelf browser
TK7882.S65 Signal Processing Methods for Music Transcription | TK7882.S65 Design and Optimization of Passive UHF RFID Systems | TK7882.S65 Advances for In-Vehicle and Mobile Systems | TK7882.S65 Foundations and Applications of Sensor Management | TK7882.S65 Human Factors and Voice Interactive Systems | TK7882.S65 Adaptive Nonlinear System Identification | TK7882.S65 Time-Domain Beamforming and Blind Source Separation |
Overview of Book -- Stochastic Control Theory for Sensor Management -- Information Theoretic Approaches to Sensor Management -- Joint Multi-Target Particle Filtering -- Pomdp Approximation Using Simulation and Heuristics -- Multi-Armed Bandit Problems -- Application of Multi-Armed Bandits to Sensor Management -- Active Learning and Sampling -- Plan-In-Advance Active Learning 0f Classifiers -- Application of Sensor Scheduling Concepts to Radar -- Defense Applications -- Appendices.
Foundations and Applications of Sensor Management presents the emerging theory of sensor management with applications to real-world examples such as landmine detection, adaptive signal and image sampling, multi-target tracking, and radar waveform scheduling. It is written by leading experts in the field for a diverse engineering audience ranging from signal processing, to automatic control, statistics, and machine learning. The level of treatment of the book is tutorial and self-contained. The chapters of the book follow a logical development from theoretical foundations to approximate approaches and ending with applications. The coverage includes the following topics: stochastic control foundations of sensor management; multi-armed bandits and their connections to sensor management; information-theoretic approaches; managed sensing for multi-target tracking; approximation methods based on embedded simulation; active learning for classification and sampling; and waveform scheduling for radar. An appendix is included to provide essential background on topics the reader may not have encountered as a first-year graduate student: Markov decision processes; information theory; and stopping times. Foundations and Applications of Sensor Management is an important reference for signal processing and control engineers and researchers as well as machine learning application developers.
There are no comments for this item.