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Computer Vision (one more link added)

Dana H. Ballard and Christopher M. Brown
Prentice Hall | 1982 | English | ISBN: 0131653164 | 544 pages | PDF | 35 Mb
Excerpts from the Preface:

The dream of intelligent automata goes back to antiquity; its first major articulation in the context of digital computers was by Turing around 1950. Since then, this dream has been pursued primarily by workers in the field of artificial intelligence, whose goal is to endow computers with information-processing capabilities comparable to those of biological organisms. From the outset, one of the goals of artificial intelligence has been to equip machines with the capability of dealing with sensory inputs.

Computer vision is the construction of explicit, meaningful descriptions of physical objects from images. Image understanding is very different from image processing, which studies image-to-image transformations, not explicit description building. Descriptions are a prerequisite for recognizing, manipulating, and thinking about objects.

We perceive a world of coherent three-dimensional objects with many invariant properties. Objectively, the incoming visual data do not exhibit corresponding coherence or invariance; they contain much irrelevant or even misleading variation. Somehow our visual system, from the retinal to cognitive levels, understands, or imposes order on, chaotic visual input. It does so by using intrinsic information that may reliably be extracted from the input, and also through assumptions and knowledge that are applied at various levels in visual processing.
The challenge of computer vision is one of explicitness. Exactly what information about scenes can be extracted from an image using only very basic assumptions about physics and optics? Explicitly, what computations must be performed? Then, at what stage must domain-dependent, prior knowledge about the world be incorporated into the understanding process? How are world models and knowledge represented and used? This book is about the representations and mechanisms that allow image information and prior knowledge to interact in image understanding.

Computer vision is a relatively new and fast-growing field. The first experiments were conducted in the late 1950s, and many of the essential concepts have been developed during the last five years. With this rapid growth, crucial ideas have arisen in disparate areas such as artificial intelligence, psychology, computer graphics, and image processing. Our intent is to assemble a selection of this material in a form that will serve both as a senior/graduate-level academic text and as a useful reference to those building vision systems. This book has a strong artificial intelligence flavor, and we hope this will provoke thought. We believe that both the intrinsic image information and the internal model of the world are important in successful vision systems.

Book Organization:

The book is organized into four parts, based on descriptions of objects at four different levels of abstraction.
1. Generalized images-images and image-like entities.
2. Segmented images-images organized into subimages that are likely to correspond to "interesting objects."
3. Geometric structures-quantitative models of image and world structures.
4. Relational structures-complex symbolic descriptions of image and world structures.

The parts follow a progression of increasing abstractness. Although the four parts are most naturally studied in succession, they are not tightly interdependent. Part I is a prerequisite for Part II, but Parts III and IV can be read independently.

Intended Audience:
Parts of the book assume some mathematical and computing background (calculus, linear algebra, data structures, numerical methods). However, throughout the book mathematical rigor takes a backseat to concepts. Our intent is to transmit a set of ideas about a new field to the widest possible audience.

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Posted in books by shadowbraz on Jun. 01, 2008 // 17:49 | Comments (0)
Hyperspectral Data Compression

by Giovanni Motta, Francesco Rizzo, and James A. Storer
Springer | 2005| ISBN: 0387285792| 415 pages | pdf| 41MB

Hyperspectral Data Compression provides a survey of recent results in the field of compression of remote sensed 3D data, with a particular interest in hyperspectral imagery. Chapter 1 addresses compression architecture, and reviews and compares compression methods. Chapters 2 through 4 focus on lossless compression (where the decompressed image must be bit for bit identical to the original). Chapter 5, contributed by the editors, describes a lossless algorithm based on vector quantization with extensions to near lossless and possibly lossy compression for efficient browning and pure pixel classification. Chapter 6 deals with near lossless compression while. Chapter 7 considers lossy techniques constrained by almost perfect classification. Chapters 8 through 12 address lossy compression of hyperspectral imagery, where there is a tradeoff between compression achieved and the quality of the decompressed image. Chapter 13 examines artifacts that can arise from lossy compression.

About the Author
James A. Storer is Chair of the IEEE Data Compression Conference.

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Posted in books by shadowbraz on Jun. 01, 2008 // 18:08 | Comments (0)
Erbium-Doped Fiber Amplifiers

by Philippe C. Becker, N. Anders Olsson, and Jay R. Simpson,
Academic Press|May 15, 1999 | English| ISBN: 0120845903|pdf|460 pages| 33 Mb
The book provides the reader with insight and understanding for amplifiers and optically amplified communication systems, essential building blocks of today's fiber optic networks. This book is full of practical examples. With respect to ED's book this book is far more practical and has fewer errors. One thing to note on the arguemnt on EDFA proprierty/discovery. The real contributors to the art & science rarely published papers. They designed, built and deployyed the earliest devices and acihieved more understanding of most "paper" writers. Olsen, Becker, and Simpson wrote some of the early papers, but now all hold high positions in innovative srtartups - Becker, VP @ Corvis; Olsen, founder, CTO @ Cenix; Simpson, Key scientist at Ciena. This innovative start up mentality is seen throughout the book. PS: most of the models introduced in ED's book have been subseuently improved and modified (e.g. average inversion model.) I am waiting for some one to write an up to date review of EDFA modeling. Of course my bias would be that the author whould have actually sold/deployeed what he had modeled.
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Posted in books by shadowbraz on Jun. 01, 2008 // 22:57 | Comments (0)