Yali Amit: 2D Object Detection and Recognition: Models, Algorithms, and NetworksDownload PDF MOBi EPUB Kindle
DescriptionThis book discusses the construction and training of models, computational approaches to efficient implementation, and parallel implementations in biologically plausible neural network architectures.
Two important subproblems of computer vision are the detection and recognition of 2D objects in gray-level images. The book describes a range of deformable template models, from coarse sparse models involving discrete, fast computations to more finely detailed models based on continuum formulations, involving intensive optimization. 2D Object Detection and Recognition: Models, Algorithms, and Networks . In this important book, Yali Amit presents a novel synthesis of these strands of research. Yali Amit . Highly recommended. While computer vision researchers have largely concentrated on the geometric aspects of the problem such as recognition under varying poses, researchers in statistics and machine learning typically have treated the problem as one of classifying feature vectors. The approach is based on statistical modeling and estimation, with an emphasis on simplicity, transparency, and computational efficiency. A recurring theme is a coarse to fine approach to the solution of vision problems. The efficient and well motivated algorithms have fundamental theoretical as well as practical implications to the study of computer vision. His approach to recognition based on learned configurations of sparse features provides a rare combination of efficient algorithms based on a solid statistical foundation. Editorial Reviews Review "Modeling the human ability to identify objects in images has proved to be a significant challenge. Each model is defined in terms of a subset of points on a reference grid (the template), a set of admissible instantiations of these points (deformations), and a statistical model for the data given a particular instantiation of the object present in the image. The book provides detailed descriptions of the algorithms used as well as the code, and the software and data sets are available on the Web. The book will appeal to computer scientists as well as researchers modeling the functions of biological visual systems. "--Jitendra Malik, Department of Computer Science, University of California at BerkeleyPlease note: Endorser gives permission to excerpt from quote. "The book develops a novel and elegant approach to the important problem of visual object recognition. "--Shimon Ullman, The Weizmann Institute of Science, Israel About the Author Yali Amit is Professor of Statistics and Computer Science at the University of Chicago. Amit's thorough and well-documented experimentation with examples ranging from medical images to handwritten digits should set a standard for the field.
Rating:4,5 / 5
- ISBN-10: 0262011948
- Language: English
- Publisher: The MIT Press (November 1, 2002)
File size: 7,7 MB
Format: PDF - Download 2D Object Detection and Recognition: Models, Algorithms, and Networks PDF
Format: EPUB - Download 2D Object Detection and Recognition: Models, Algorithms, and Networks EPUB
Format: MOBI - Download 2D Object Detection and Recognition: Models, Algorithms, and Networks MOBI
Format: KINDLE - Download 2D Object Detection and Recognition: Models, Algorithms, and Networks KINDLE
download free, epub, novel, download ebook , book similar to , fnac, epub download, download pdf, forum, download epub , Yali Amit pocket, ebook, book, tv series, as film, critic review, Yali Amit , free download, pocket, facebook, blog, paperback, audio, free ebook, book Yali Amit , free pdf, reviews, epub, kindle, 2D Object Detection and Recognition: Models, Algorithms, and Networks price, Yali Amit opinions, book review , epub ddl, Yali Amit , download book , book summary , Yali Amit pdf, download epub, pdf, pocket , movie, true story, download , ebook pdf, song, mobi, pages,
download Exotic Animal Formulary, 4e
Introducing Delphi Programming: Theory through Practise
Creating Development Environments with Vagrant