<P>This book brings together the latest research achievements from various areas of signal processing and related disciplines in order to consolidate the existing and proposed new directions in DSP based knowledge extraction and information fusion. Within the book contributions presenting both novel
Signal Processing Techniques for Knowledge Extraction and Information Fusion
โ Scribed by Beth Jelfs, Phebe Vayanos, Soroush Javidi, Vanessa Su Lee Goh, Danilo Mandic (auth.), Danilo Mandic, Martin Golz, Anthony Kuh, Dragan Obradovic, Toshihisa Tanaka (eds.)
- Publisher
- Springer
- Year
- 2008
- Tongue
- English
- Leaves
- 320
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
This state-of-the-art resource brings together the latest findings from the cross-fertilization of signal processing, machine learning and computer science. The emphasis is on demonstrating synergy of different signal processing methods with knowledge extraction and heterogeneous information fusion. Issues related to the processing of signals with low signal-to-noise ratio, solving real-world multi-channel problems, and using adaptive techniques where nonstationarity, uncertainty and complexity play major roles are addressed. Particular methods include Independent Component Analysis, Support Vector Machines, Distributed and Collaborative Adaptive Filtering, Empirical Mode Decomposition, Self Organizing Maps, Fuzzy Logic, Evolutionary Algorithms and several others used frequently in these fields. Also included are both important and novel applications from telecommunications, renewable energy and biomedical engineering.
Signal Processing Techniques for Knowledge Extraction and Information Fusion which proposes new techniques for extracting knowledge based on combining heterogeneous information sources is an excellent reference for professionals in signal and image processing, machine learning, data and sensor fusion, computational intelligence, knowledge discovery, pattern recognition, and environmental science and engineering.
โฆ Table of Contents
Front Matter....Pages I-XXII
Collaborative Adaptive Filters for Online Knowledge Extraction and Information Fusion....Pages 3-21
Wind Modelling and its Possible Application to Control of Wind Farms....Pages 23-36
Hierarchical Filters in a Collaborative Filtering Framework for System Identification and Knowledge Retrieval....Pages 37-54
Acoustic Parameter Extraction From Occupied Rooms Utilizing Blind Source Separation....Pages 55-74
Sensor Network Localization Using Least Squares Kernel Regression....Pages 77-96
Adaptive Localization in Wireless Networks....Pages 97-120
Signal Processing Methods for Doppler Radar Heart Rate Monitoring....Pages 121-140
Multimodal Fusion for Car Navigation Systems....Pages 141-158
Cue and Sensor Fusion for Independent Moving Objects Detection and Description in Driving Scenes....Pages 161-180
Distributed Vision Networks for Human Pose Analysis....Pages 181-200
Skin Color Separation and Synthesis for E-Cosmetics....Pages 201-220
ICA for Fusion of Brain Imaging Data....Pages 221-240
Complex Empirical Mode Decomposition for Multichannel Information Fusion....Pages 243-260
Information Fusion for Perceptual Feedback: A Brain Activity Sonification Approach....Pages 261-273
Advanced EEG Signal Processing in Brain Death Diagnosis....Pages 275-298
Automatic Knowledge Extraction: Fusion of Human Expert Ratings and Biosignal Features for Fatigue Monitoring Applications....Pages 299-316
Back Matter....Pages 317-320
โฆ Subjects
Data Mining and Knowledge Discovery
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