
Advances in Pattern Recognition Research
Description
Alles über E-Books | Antworten auf Fragen rund um E-Books, Kopierschutz und Dateiformate finden Sie in unserem Info- & Hilfebereich.
More details
Other editions
Additional editions

Content
- Intro
- Contents
- Preface
- Chapter 1
- Automatic Target Recognition Processor Using Integrated Grayscale Optical Correlator and Neural Network
- Abstract
- 1. Introduction
- 2. Grayscale Optical Correlator for Target Detection
- 2.1. Grayscale Optical Correlator System Space-Bandwidth-Product Matching
- 2.2. Input SLM Selection
- 3. Miniaturized Grayscale Optical Correlator
- 3.1. 512 x 512 GOC System Architecture
- 3.2. Graphic User Interface of the GOC System
- 3.3. Grayscale Optical Correlator Testing
- 3.4. Summary
- 4. Composite OT-MACH Correlation Filter
- 4.1. Principle of OT-MACH Filter
- 4.2. Automatic Optimization of OT-MACH Filter
- 4.2.1. Optimization Approach
- 4.2.2. Test Results
- 4.2.3. Discussion and Summary
- 5. Optically Implementation of OT-MACH Filter
- 5.1. Filter Projection to Dynamic-Range-Limited Real-Valued SLM
- 5.2. Summary
- 6. Second Stage: Neural Network Target Recognition and Classification
- 6.1. Sonar Mine ATR Processing - An Illustrating Example
- 6.2. Wavelet Transform
- 6.3. Feature Extraction
- 6.4. Neural Network
- 6.5. Results and Discussion
- Conclusion
- Acknowledgments
- References
- Chapter 2
- Deep Neural Networks for Pattern Recognition
- Abstract
- 1. Pattern Recognition in Human Vision
- 2. Human Vision-Inspired Conditional Generative Adversarial Networks
- 3. Precision Multi-Band Infrared Image Segmentation Using Conditional Generative Adversarial Networks
- 4. Occluded Object Reconstruction Using Conditional Generative Adversarial Networks
- 5. Image Enhancement from Visual to Infrared Using Conditional Generative Adversarial Networks
- 6. Data Augmentation for Training Deep Neural Networks
- 7. Incremental Training
- Conclusion
- Acknowledgments
- References
- Chapter 3
- Robust Pattern Recognition via Joint Transform Correlation
- Abstract
- 1. Introduction
- 2. Theoretical Analysis
- 2.1. Fringe-Adjusted Joint Transform Correlation (FJTC)
- 2.2. Logarithmic FJTC (LFJTC)
- 2.3. Shifted Phase-Encoded Fringe-Adjusted JTC (SPJTC)
- 2.4. Gaussian Filter Based SPJTC (G-SPJTC)
- 2.5. Gaussian Filter Based LFJTC (G-LFJTC)
- 3. Experimental Results
- 3.1. Dataset Description
- 3.2. Results and Comparison
- Conclusion
- References
- Chapter 4
- The Spatial Domain Optimal Trade-Off Maximum Average Correlation Height Filter and Its Performance Assessment
- Abstract
- 1. Introduction
- 2. Frequency Domain Design of the OT-MACH Filter
- 3. Performance Limitations of the Frequency Domain OT-MACH Filter
- 4. Spatial domain Optimal Trade-Off Maximum Average Correlation Height (SPOT-MACH) Filter
- 4.1. Why Spatial Domain Correlation Filters?
- 4.2. Design of the SPOT-MACH Filter
- 4.3. SPOT-MACH Filter Implementation
- 4.4. Operation of the SPOT-MACH Filter
- 4.5. Performance Assessment of the SPOT-MACH Filter
- 5. Performance of the SPOT-MACH Filter with Infra-Red Imagery
- 6. Comparison of the SPOT-MACH Filter and the Shift Invariant Feature Transform Using FLIR Imagery
- Conclusion
- References
- Chapter 5
- Application of Deep Learning as a Pattern Recognition Technique in Information Security
- Abstract
- 1. Introduction to Information Security
- 1.1. Core Objectives
- 1.2. Key Components of Information Security
- 2. Machine Learning
- 2.1. Supervised Machine Learning Algorithms (SML)
- 2.2. Contribution of Machine Learning Algorithms in the Field of Security
- 3. Deep Learning
- 3.1. Conventional Machine Learning Techniques vs. Deep Learning Techniques
- 3.1. Deep Learning Approaches
- 3.2. State of the Art Applications
- 3.2.1. Deep Learning for Malware Detection
- 3.2.2. Deep Learning for Smartphone Security
- 3.2.3. Deep Learning for Network Intrusion Detection
- 3.3. Limitations of Deep Learning
- Conclusion
- References
- Chapter 6
- A Statistical Review of the MNIST Benchmark Data Problem
- Abstract
- 1. Introduction
- 2. Comments on Related Work
- 3. Probabilistic Neural Networks
- 4. Implementation of PNN
- 5. Numerical Experiments
- 5.1. Non-Extended Data
- 5.2. Extended Data
- 5.3. Test Data Included into Training
- 5.4. Resubstitution Experiments
- 6. Statistically Balanced Benchmark
- Conclusion
- Appendix
- Acknowledgments
- References
- Chapter 7
- Computing with an Artificial Neural Network to Enhance Information Processing: Using a New Methodology of Feeding the Training Input-Output Mapping
- Abstract
- 1. Introduction
- 2. Artificial Neural Network Architectures
- 2.1. Data Normalization
- 2.2. Training Algorithms
- 2.2.1. Levenberg Marquardt
- 2.2.2. Conjugate Gradient
- 3. Simulation Results and Network Training Methodologies
- 3.1. Preparation of the Input-Output Unit for the Neural Models
- 3.1.1. First Methodology
- 3.1.1.1. Input Database Generation
- 3.1.1.2. Output Database Generation
- 3.1.2. Second Methodology
- 3.1.2.1. Input Database Generation
- 3.1.2.2. Output Database Generation
- 4. Time Comparison
- Conclusion
- Acknowledgments
- Appendix I
- Appendix II
- References
- Chapter 8
- Batches Based Feature Extraction for a Pattern Recognition System Using the Connectionist Models of a Wavelet Neural Network
- Abstract
- 1. Introduction
- 2. Pretreatment Stages of Characters and Databases
- 3. Neural Network Architecture
- 3.1. Connectionist Models of Neural Network
- 3.1.1. Wavelet Functions
- 3.1.2. Discrete Wavelet Transform
- 3.2. Training Algorithm of Second Order, Levenberg Marquardt
- 3.3. Extraction of the Input-Output Units
- 3.3.1. Extraction of the Input Units
- 3.3.2. Normalization Process of the Databases
- 3.3.3. Extraction of the Output Units
- 4. Results and Discussions
- Conclusion
- Acknowledgments
- References
- About the Editors
- Index
- Blank Page
System requirements
File format: PDF
Copy-Protection: Adobe-DRM (Digital Rights Management)
System requirements:
- Computer (Windows; MacOS X; Linux): Install the free reader Adobe Digital Editions prior to download (see eBook Help).
- Tablet/smartphone (Android; iOS): Install the free app Adobe Digital Editions or the app PocketBook before downloading (see eBook Help).
- E-reader: Bookeen, Kobo, Pocketbook, Sony, Tolino and many more (only limited: Kindle).
The file format PDF always displays a book page identically on any hardware. This makes PDF suitable for complex layouts such as those used in textbooks and reference books (images, tables, columns, footnotes). Unfortunately, on the small screens of e-readers or smartphones, PDFs are rather annoying, requiring too much scrolling.
This eBook uses Adobe-DRM, a „hard” copy protection. If the necessary requirements are not met, unfortunately you will not be able to open the eBook. You will therefore need to prepare your reading hardware before downloading.
Please note: We strongly recommend that you authorise using your personal Adobe ID after installation of any reading software.
For more information, see our eBook Help page.