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Handbook of Pattern Recognition and Computer VisionMarch 2016
Publisher:
  • World Scientific Publishing Co., Inc.
  • 1060 Main Street Suite 1B River Edge, NJ
  • United States
ISBN:978-981-4656-52-8
Published:15 March 2016
Pages:
560
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Abstract

Pattern recognition, image processing and computer vision are closely linked areas which have seen enormous progress in the last fifty years. Their applications in our daily life, commerce and industry are growing even more rapidly than theoretical advances. Hence, the need for a new handbook in pattern recognition and computer vision every five or six years as envisioned in 1990 is fully justified and valid. The book consists of three parts: (1) Pattern recognition methods and applications; (2) Computer vision and image processing; and (3) Systems, architecture and technology. This book is intended to capture the major developments in pattern recognition and computer vision though it is impossible to cover all topics. The chapters are written by experts from many countries, fully reflecting the strong international research interests in the areas. This fifth edition will complement the previous four editions of the book. Readership: Graduate students, academics, practitioners, researchers, computer scientists, electrical and medical engineers.

Contributors

Recommendations

Zhaoqiang Lai

Pattern recognition and computer vision have very broad applications, and technologies in the field are evolving rapidly. It is great that the editor brought this book up to date in the 5th edition with the latest developments in the field. The book has three parts: "Pattern Recognition Methods and Applications," "Computer Vision and Image Processing," and "System, Architecture, and Technology." Part 1 is divided into ten chapters. In chapter 1.1, syntactic pattern recognition issues are presented, which slow down the development of syntactic pattern recognition. Chapter 1.2 introduces "deep discriminative and generative models for speech pattern recognition." Chapter 1.3 presents "a general issue concerning the comparison of performances of a classifier that has been trained in different kinds of ways." Chapter 1.4 explores the k -nearest neighbors ( k -nn) approach in the framework of information theoretic clustering. Chapter 1.5 talks about pruning trees in random forests, making the classification of medical images more reliable. In chapter 1.6, the optimum-path forest (OPF) classifier is presented. Chapter 1.7 focuses on the curvelet-based texture features. Chapter 1.8 discusses the coin recognition problem, and chapter 1.9 is dedicated to underwater live fish recognition. Model adaptation for personalized music emotion recognition is discussed in chapter 1.10. Part 2 has ten chapters. Chapter 2.1 describes unified context-assisted methods from the perspective of two-person identification tasks. Chapter 2.2 gives a review on "statistical shape spaces for 3D data." Chapter 2.3 presents multiple target tracking without appearance descriptors. Chapter 2.4 "proposes to augment the current data-driven visual learning methods with knowledge of different types from different sources to improve different computer vision tasks." Chapter 2.5 proposes a new approach on graph distance to speed up graph matching. Chapter 2.6 focuses on the long short-term memory (LSTM) neural network for document image analysis. Chapter 2.7 covers "the use of multilevel filtering based on hierarchical representations of the image for land cover classification." Chapter 2.8 introduces "manifold-based sparse representation [algorithms] for hyperspectral image classification." Chapter 2.9 gives "a review of texture classification methods and ... applications in medical image analysis of the brain." Chapter 2.10 discusses 3D tomosynthesis to detect breast cancer. Part 3 includes nine chapters. In chapter 3.1, several representations are combined to improve sketch recognition. Chapter 3.2 achieves image retrieval with a multiple kernel learning algorithm. Chapter 3.3 presents the face identification problem in video streams. Chapter 3.4 describes the development of pattern recognition methodologies for fuel cell applications. Chapter 3.5 talks about "outdoor shadow modeling and its applications." Chapter 3.6 focuses on model-free tracking. Chapter 3.7 presents "using 3D vision for automated industrial inspection." Chapter 3.8 discusses the challenges in imaged-based barcode reading, and chapter 3.9 is dedicated to "parallel pattern matching using the automata processor." The chapters are organized to cover the theory, algorithms, and applications of pattern recognition and computer vision. The book offers cutting-edge techniques that are presented very clearly. Furthermore, each chapter (paper) provides a rich number of references for readers. Although this is not a book for undergraduate students, it's a great book for graduate students and researchers. Readers do not have to read the chapters one by one; they could just directly jump into the ones they are interested in based on their research interests. For graduate students pursuing PhDs and professionals doing research and development in the pattern recognition and computer vision field, this is a book you shouldn't miss. Online Computing Reviews Service

S. Ramakrishnan

Pattern recognition and computer vision are the most popular and powerful applications in modern computing industries. They have found wide ranges of applications such as biometrics, biomedical signal classification, industrial automation, and so on. Over the past few decades, researchers in the fields of computers, electrical engineering, and electronics engineering have worked continuously to improve the performances of pattern recognition systems. In spite of these continuous efforts, there is still plenty of scope for new and additional research in these fields. This is due to the popularization of lightweight computing devices, increased customer expectations, and business competitions. The fifth edition of this handbook compiles the intricacies of pattern recognition and computer vision neatly. Editor C. H. Chen has organized 29 valuable chapters into three parts: "Pattern Recognition Methods and Applications," "Computer Vision and Image Processing," and "System, Architecture, and Technology." Part 1's ten chapters cover various pattern recognition methods, such as generative models; supervised, unsupervised, and semi-supervised learning; k -nearest neighbor clustering; random forests; pruning; neural networks; and model adaptation. This part also has various pattern applications such as speech recognition, medical imaging, radar image classification, texture classification, the evaluation of coins, underwater live fish recognition, and emotion recognition in music. Since the book comprehensively covers all three types of learning methods (supervised, unsupervised, semi-supervised learning) with a variety of applications, it can serve as a true handbook for readers. Most of the applications are presented with experimental results and discussions, making the reading fruitful and interesting. Part 2 also has ten chapters covering diversified topics of computer vision and image processing, including context-assisted methods, statistical shape spaces, tracking systems, knowledge augmented visual learning, graph edit distance, long short-term memory neural networks, morphological representations, sparse representation, manifold learning, and 3D tomosynthesis. All these topics are presented using suitable applications along with experimental results and discussions. The applications presented in this chapter include person identification in surveillance; face recognition; motion-based tracking; facial expression recognition; fingerprint classification; document image analysis; the classification of remote sensing images; brain tumor detection; epilepsy detection; and the detection of multiple sclerosis, Alzheimer's disease, and breast cancer. Compared to Part 1, Part 2 has a rich set of applications, motivating readers to investigate and explore in depth. Part 3 has nine chapters covering techniques such as sketch representation, multiple kernel learning, particle swarm optimization, shadow modeling, structured learning, Kalman filtering, and support vector machines. This chapter also has interesting applications and experimental results, as well as discussions to illustrate the working principles of these techniques. The applications considered in this part are content-based image retrieval, face recognition, fault detection in fuel cells, shadow detection, object tracking, automated industrial inspection, and barcode readers. Over and above presenting the techniques along with applications, this chapter touches upon hardware-level architectural details such as VLSI implementation of fuzzy ARTMAP using Vocallo MGW, Atom N270, core i3-530, real-time image processing in embedded systems, and silicon architecture of automata processors. Overall, this book has a rich set of techniques with a wide range of applications for pattern recognition and computer vision. I have some suggestions for a sixth edition: (1) include a foundation chapter that covers the basics of pattern recognition and computer vision to make the book self-contained; and provide (2) a road map for reading, (3) exercises along with solutions, and (4) keywords for all chapters. This book will be useful to electrical engineering and computer science graduate students and researchers working in the field of machine vision. Online Computing Reviews Service

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