The original Japanese edition of this book, published by Saiensu-sha, Japan, in March 2005, has fortunately acquired a favorable reputation. I am grateful to the readers for their kind feedbacks, many of which are included in this edition. I hope this English publication attracts readers in wider areas, and evokes valuable feedbacks furthermore. In the months after the Japanese publication, researches on the compl- valued neural networks have kept evolution in respective directions. There are some plans of special sessions in international conferences and special issues in journals. The…mehr
The original Japanese edition of this book, published by Saiensu-sha, Japan, in March 2005, has fortunately acquired a favorable reputation. I am grateful to the readers for their kind feedbacks, many of which are included in this edition. I hope this English publication attracts readers in wider areas, and evokes valuable feedbacks furthermore. In the months after the Japanese publication, researches on the compl- valued neural networks have kept evolution in respective directions. There are some plans of special sessions in international conferences and special issues in journals. The bibliography has been slightly modi?ed to include the special sessions and latest journal publications. On the other hand, references written in Japanese on domestic circumstances have been omitted. Besides, Fig.1.1 has been added, and Fig.2.1 has been modi?ed, which are related to theSpecial Issue on Complex-Valued Neural Networks, The Journal of the IEICE, 87 (6), June 2004 (in Japanese), so that even readers not having glancedtheissuecanobtainclearconcepts.Withthesemodi?cations,Iexpect a higher appeal in this English edition. I am very much obliged to Dr. Thomas Ditzinger, Engineering Editor, Springer-Verlag, for his continuous help in publication. Tokyo, Japan Akira Hirose April 2006 Preface The studies on complex-valued neural networks have recently been evolving in various directions. The pioneering areas include electromagnetic-wave and lightwave sensing and imaging, independent component analysis in blind s- aration, blur restoration in image processing, and so on. Developing appli- tionsinvolveadaptivequantumdevices,quantumcomputation,socialsystems related to periodicity and oscillation, and so forth.
Basic Ideas and Fundamentals: Why are complex-valued neural networks inevitable?.- Complex-valued neural networks fertilize electronics.- Neural networks: The characteristic viewpoints.- Complex-valued neural networks: Distinctive features.- Constructions and dynamics of neural networks.- Applications: How wide are the application fields?.- Land-surface classification with unevenness and reflectance taken into consideration.- Adaptive radar system to visualize antipersonnel plastic landmines.- Removal of phase singular points to create digital elevation map.- Lightwave associative memory that memorizes and recalls information depending on optical-carrier frequency.- Adaptive optical-phase equalizer.- Developmental learning with behavioral-mode tuning by carrier-frequency modulation.- Pitch-asynchronous overlap-add waveform-concatenation speech synthesis by optimizing phase spectrum in frequency domain.
Preface xv 1 Application Fields and Fundamental Merits 1 Akira Hirose 1.1 Introduction 1 1.2 Applications of Complex-Valued Neural Networks 2 1.3 What is a complex number? 5 1.4 Complex numbers in feedforward neural networks 8 1.5 Metric in complex domain 12 1.6 Experiments to elucidate the generalization characteristics 16 1.7 Conclusions 26 2 Neural System Learning on Complex-Valued Manifolds 33 Simone Fiori 2.1 Introduction 34 2.2 Learning Averages over the Lie Group of Unitary Matrices 35 2.3 Riemannian-Gradient-Based Learning on the Complex Matrix-Hypersphere 41 2.4 Complex ICA Applied to Telecommunications 49 2.5 Conclusion 53 3 N-Dimensional Vector Neuron and Its Application to the N-Bit Parity Problem 59 Tohru Nitta 3.1 Introduction 59 3.2 Neuron Models with High-Dimensional Parameters 60 3.3 N-Dimensional Vector Neuron 65 3.4 Discussion 69 3.5 Conclusion 70 4 Learning Algorithms in Complex-Valued Neural Networks using Wirtinger Calculus 75 Md. Faijul Amin and Kazuyuki Murase 4.1 Introduction 76 4.2 Derivatives in Wirtinger Calculus 78 4.3 Complex Gradient 80 4.4 Learning Algorithms for Feedforward CVNNs 82 4.5 Learning Algorithms for Recurrent CVNNs 91 4.6 Conclusion 99 5 Quaternionic Neural Networks for Associative Memories 103 Teijiro Isokawa, Haruhiko Nishimura, and Nobuyuki Matsui 5.1 Introduction 104 5.2 Quaternionic Algebra 105 5.3 Stability of Quaternionic Neural Networks 108 5.4 Learning Schemes for Embedding Patterns 124 5.5 Conclusion 128 6 Models of Recurrent Clifford Neural Networks and Their Dynamics 133 Yasuaki Kuroe 6.1 Introduction 134 6.2 Clifford Algebra 134 6.3 Hopfield-Type Neural Networks and Their Energy Functions 137 6.4 Models of Hopfield-Type Clifford Neural Networks 139 6.5 Definition of Energy Functions 140 6.6 Existence Conditions of Energy Functions 142 6.7 Conclusion 149 7 Meta-cognitive Complex-valued Relaxation Network and its Sequential Learning Algorithm 153 Ramasamy Savitha, Sundaram Suresh, and Narasimhan Sundararajan 7.1 Meta-cognition in Machine Learning 154 7.2 Meta-cognition in Complex-valued Neural Networks 156 7.3 Meta-cognitive Fully Complex-valued Relaxation Network 164 7.4 Performance Evaluation of McFCRN: Synthetic Complexvalued Function Approximation Problem 171 7.5 Performance Evaluation of McFCRN: Real-valued Classification Problems 172 7.6 Conclusion 178 8 Multilayer Feedforward Neural Network with Multi-Valued Neurons for Brain-Computer Interfacing 185 Nikolay V. Manyakov, Igor Aizenberg, Nikolay Chumerin, and Marc M. Van Hulle 8.1 Brain-Computer Interface (BCI) 185 8.2 BCI Based on Steady-State Visual Evoked Potentials 188 8.3 EEG Signal Preprocessing 192 8.4 Decoding Based on MLMVN for Phase-Coded SSVEP BCI 196 8.5 System Validation 201 8.6 Discussion 203 9 Complex-Valued B-Spline Neural Networks for Modeling and Inverse of Wiener Systems 209 Xia Hong, Sheng Chen and Chris J. Harris 9.1 Introduction 210 9.2 Identification and Inverse of Complex-Valued Wiener Systems 211 9.3 Application to Digital Predistorter Design 222 9.4 Conclusions 229 10 Quaternionic Fuzzy Neural Network for View-invariant Color Face Image Recognition 235 Wai Kit Wong, Gin Chong Lee, Chu Kiong Loo, Way Soong Lim, and Raymond Lock 10.1 Introduction 236 10.2 Face Recognition System 238 10.3 Quaternion-Based View-invariant Color Face Image Recognition 244 10.4 Enrollment Stage and Recognition Stage for Quaternion- Based Color Face Image Correlator 255 10.5 Max-Product Fuzzy Neural Network Classifier 260 10.6 Experimental Results 266 10.7 Conclusion and Future Research Directions 274 References 274 Index 279
Basic Ideas and Fundamentals: Why are complex-valued neural networks inevitable?.- Complex-valued neural networks fertilize electronics.- Neural networks: The characteristic viewpoints.- Complex-valued neural networks: Distinctive features.- Constructions and dynamics of neural networks.- Applications: How wide are the application fields?.- Land-surface classification with unevenness and reflectance taken into consideration.- Adaptive radar system to visualize antipersonnel plastic landmines.- Removal of phase singular points to create digital elevation map.- Lightwave associative memory that memorizes and recalls information depending on optical-carrier frequency.- Adaptive optical-phase equalizer.- Developmental learning with behavioral-mode tuning by carrier-frequency modulation.- Pitch-asynchronous overlap-add waveform-concatenation speech synthesis by optimizing phase spectrum in frequency domain.
Preface xv 1 Application Fields and Fundamental Merits 1 Akira Hirose 1.1 Introduction 1 1.2 Applications of Complex-Valued Neural Networks 2 1.3 What is a complex number? 5 1.4 Complex numbers in feedforward neural networks 8 1.5 Metric in complex domain 12 1.6 Experiments to elucidate the generalization characteristics 16 1.7 Conclusions 26 2 Neural System Learning on Complex-Valued Manifolds 33 Simone Fiori 2.1 Introduction 34 2.2 Learning Averages over the Lie Group of Unitary Matrices 35 2.3 Riemannian-Gradient-Based Learning on the Complex Matrix-Hypersphere 41 2.4 Complex ICA Applied to Telecommunications 49 2.5 Conclusion 53 3 N-Dimensional Vector Neuron and Its Application to the N-Bit Parity Problem 59 Tohru Nitta 3.1 Introduction 59 3.2 Neuron Models with High-Dimensional Parameters 60 3.3 N-Dimensional Vector Neuron 65 3.4 Discussion 69 3.5 Conclusion 70 4 Learning Algorithms in Complex-Valued Neural Networks using Wirtinger Calculus 75 Md. Faijul Amin and Kazuyuki Murase 4.1 Introduction 76 4.2 Derivatives in Wirtinger Calculus 78 4.3 Complex Gradient 80 4.4 Learning Algorithms for Feedforward CVNNs 82 4.5 Learning Algorithms for Recurrent CVNNs 91 4.6 Conclusion 99 5 Quaternionic Neural Networks for Associative Memories 103 Teijiro Isokawa, Haruhiko Nishimura, and Nobuyuki Matsui 5.1 Introduction 104 5.2 Quaternionic Algebra 105 5.3 Stability of Quaternionic Neural Networks 108 5.4 Learning Schemes for Embedding Patterns 124 5.5 Conclusion 128 6 Models of Recurrent Clifford Neural Networks and Their Dynamics 133 Yasuaki Kuroe 6.1 Introduction 134 6.2 Clifford Algebra 134 6.3 Hopfield-Type Neural Networks and Their Energy Functions 137 6.4 Models of Hopfield-Type Clifford Neural Networks 139 6.5 Definition of Energy Functions 140 6.6 Existence Conditions of Energy Functions 142 6.7 Conclusion 149 7 Meta-cognitive Complex-valued Relaxation Network and its Sequential Learning Algorithm 153 Ramasamy Savitha, Sundaram Suresh, and Narasimhan Sundararajan 7.1 Meta-cognition in Machine Learning 154 7.2 Meta-cognition in Complex-valued Neural Networks 156 7.3 Meta-cognitive Fully Complex-valued Relaxation Network 164 7.4 Performance Evaluation of McFCRN: Synthetic Complexvalued Function Approximation Problem 171 7.5 Performance Evaluation of McFCRN: Real-valued Classification Problems 172 7.6 Conclusion 178 8 Multilayer Feedforward Neural Network with Multi-Valued Neurons for Brain-Computer Interfacing 185 Nikolay V. Manyakov, Igor Aizenberg, Nikolay Chumerin, and Marc M. Van Hulle 8.1 Brain-Computer Interface (BCI) 185 8.2 BCI Based on Steady-State Visual Evoked Potentials 188 8.3 EEG Signal Preprocessing 192 8.4 Decoding Based on MLMVN for Phase-Coded SSVEP BCI 196 8.5 System Validation 201 8.6 Discussion 203 9 Complex-Valued B-Spline Neural Networks for Modeling and Inverse of Wiener Systems 209 Xia Hong, Sheng Chen and Chris J. Harris 9.1 Introduction 210 9.2 Identification and Inverse of Complex-Valued Wiener Systems 211 9.3 Application to Digital Predistorter Design 222 9.4 Conclusions 229 10 Quaternionic Fuzzy Neural Network for View-invariant Color Face Image Recognition 235 Wai Kit Wong, Gin Chong Lee, Chu Kiong Loo, Way Soong Lim, and Raymond Lock 10.1 Introduction 236 10.2 Face Recognition System 238 10.3 Quaternion-Based View-invariant Color Face Image Recognition 244 10.4 Enrollment Stage and Recognition Stage for Quaternion- Based Color Face Image Correlator 255 10.5 Max-Product Fuzzy Neural Network Classifier 260 10.6 Experimental Results 266 10.7 Conclusion and Future Research Directions 274 References 274 Index 279
Rezensionen
"In summary, this book contains a wide variety of hot topics on advanced computational intelligence methods which incorporate the concept of complex and hypercomplex number systems into the framework of artificial neural networks . . . Nevertheless, it seems that the applications of CVNNs and hypercomplex-valued neural networks are very promising." (IEEE Computational intelligence magazine, 1 May 2013)
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