000 03308cam a2200313 a 4500
001 17224176
005 20160427113148.0
008 120323s2012 nyua b 001 0 eng
010 _a 2012008187
020 _a9781107011793 (hardback)
040 _aDLC
_cDLC
_dDLC
042 _apcc
050 0 0 _aTA1634
_b.P75 2012
082 0 0 _a006.3/7
_223
084 _aCOM012000
_2bisacsh
100 1 _aPrince, Simon J. D.
_q(Simon Jeremy Damion),
_d1972-
245 1 0 _aComputer vision :
_bmodels, learning, and inference /
_cSimon J.D. Prince.
260 _aNew York :
_bCambridge University Press,
_c2012.
300 _axi, 580 p. :
_bill. (some col.) ;
_c26 cm.
504 _aIncludes bibliographical references (p. 533-566) and index.
505 8 _aMachine generated contents note: Part I. Probability: 1. Introduction to probability; 2. Common probability distributions; 3. Fitting probability models; 4. The normal distribution; Part II. Machine Learning for Machine Vision: 5. Learning and inference in vision; 6. Modeling complex data densities; 7. Regression models; 8. Classification models; Part III. Connecting Local Models: 9. Graphical models; 10. Models for chains and trees; 11. Models for grids; Part IV. Preprocessing: 12. Image preprocessing and feature extraction; Part V. Models for Geometry: 13. The pinhole camera; 14. Models for transformations; 15. Multiple cameras; Part VI. Models for Vision: 16. Models for style and identity; 17. Temporal models; 18. Models for visual words; Part VII. Appendices: A. Optimization; B. Linear algebra; C. Algorithms.
520 _a"This modern treatment of computer vision focuses on learning and inference in probabilistic models as a unifying theme. It shows how to use training data to learn the relationships between the observed image data and the aspects of the world that we wish to estimate, such as the 3D structure or the object class, and how to exploit these relationships to make new inferences about the world from new image data. With minimal prerequisites, the book starts from the basics of probability and model fitting and works up to real examples that the reader can implement and modify to build useful vision systems. Primarily meant for advanced undergraduate and graduate students, the detailed methodological presentation will also be useful for practitioners of computer vision. [bullet] Covers cutting-edge techniques, including graph cuts, machine learning and multiple view geometry [bullet] A unified approach shows the common basis for solutions of important computer vision problems, such as camera calibration, face recognition and object tracking [bullet] More than 70 algorithms are described in sufficient detail to implement [bullet] More than 350 full-color illustrations amplify the text [bullet] The treatment is self-contained, including all of the background mathematics [bullet] Additional resources at www.computervisionmodels.com"--
650 0 _aComputer vision.
650 7 _aCOMPUTERS / Computer Graphics.
_2bisacsh
_9642
856 4 2 _3Cover image
_uhttp://assets.cambridge.org/97811070/11793/cover/9781107011793.jpg
906 _a7
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