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Visual perception through video imagery [[electronic resource] /] / edited by Michel Dhome



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Titolo: Visual perception through video imagery [[electronic resource] /] / edited by Michel Dhome Visualizza cluster
Pubblicazione: London, : ISTE
Hoboken, N.J., : Wiley, 2009
Descrizione fisica: 1 online resource (309 p.)
Disciplina: 006.3/7
006.42
Soggetto topico: Computer vision
Visual perception
Vision
Soggetto genere / forma: Electronic books.
Classificazione: ST 330
Altri autori: DhomeMichel  
Note generali: "First published in France in 2001 by Hermès Science/Lavoiser entitled 'Perception visuelle par imagerie video'" --T.p. verso.
Nota di bibliografia: Includes bibliographical references and index.
Nota di contenuto: Visual Perception through Video Imagery; Table of Contents; Introduction; Part 1; Chapter 1. Calibration of Vision Sensors; 1.1. Introduction; 1.2. General formulation of the problem of calibration; 1.2.1. Formulation of the problem; 1.2.1.1. Modeling the camera and lens: pin-hole model; 1.2.1.2. Formation of images: perspective projection; 1.2.1.3. Changing lens/camera reference point; 1.2.1.4. Changing of the camera/image point; 1.2.1.5. Changing of coordinates in the image plane; 1.2.2. General expression; 1.2.2.1. General formulation of the problem of calibration; 1.3. Linear approach
1.3.1. Principle1.3.2. Notes and comments; 1.4. Non-linear photogrammetric approach; 1.4.1. Mathematic model; 1.4.2. Solving the problem; 1.4.3. Multi-image calibration; 1.4.4. Self-calibration by bundle adjustment; 1.4.4.1. Redefinition of the problem; 1.4.4.2. Estimation of redundancy; 1.4.4.3. Solution for a near scale factor; 1.4.4.4. Initial conditions; 1.4.5. Precision calculation; 1.5. Results of experimentation; 1.5.1. Bundle adjustment for a traditional lens; 1.5.1.1. Initial and experimental conditions; 1.5.1.2. Sequence of classic images; 1.5.2. Specific case of fish-eye lenses
1.5.2.1. Traditional criterion1.5.2.2. Zero distortion at r0; 1.5.2.3. Normalization of distortion coefficients; 1.5.2.4. Experiments; 1.5.3. Calibration of underwater cameras; 1.5.3.1. Theoretical notes; 1.5.3.2. Experiments; 1.5.3.3. The material; 1.5.3.4. Results in air; 1.5.3.5. Calibration in water; 1.5.3.6. Relation between the calibration in air and in water; 1.5.4. Calibration of zooms; 1.5.4.1. Recalling optical properties; 1.5.4.2. Estimate of the principal point; 1.5.4.3. Experiments; 1.6. Bibliography; Chapter 2. Self-Calibration of Video Sensors; 2.1. Introduction
2.2. Reminder and notation2.3. Huang-Faugeras constraints and Trivedi's equations; 2.3.1. Huang-Faugeras constraints; 2.3.2. Trivedi's constraints; 2.3.3. Discussion; 2.4. Kruppa equations; 2.4.1. Geometric derivation of Kruppa equations; 2.4.2. An algebraic derivation of Kruppa equations; 2.4.3. Simplified Kruppa equations; 2.5. Implementation; 2.5.1. The choice of initial conditions; 2.5.2. Optimization; 2.6. Experimental results; 2.6.1. Estimation of angles and length ratios from images; 2.6.2. Experiments with synthetic data; 2.6.3. Experiments with real data; 2.7. Conclusion
2.8. Acknowledgement2.9. Bibliography; Chapter 3. Specific Displacements for Self-calibration; 3.1. Introduction: interest to resort to specific movements; 3.2. Modeling: parametrization of specific models; 3.2.1. Specific projection models; 3.2.2. Specifications of internal parameters of the camera; 3.2.3. Taking into account specific displacements; 3.2.4. Relation with specific properties in the scene; 3.3. Self-calibration of a camera; 3.3.1. Usage of pure rotations or points at the horizon; 3.3.2. Pure rotation and fixed parameters; 3.3.3. Rotation around a fixed axis
3.4. Perception of depth
Sommario/riassunto: For several decades researchers have tried to construct perception systems based on the registration data from video cameras. This work has produced various tools that have made recent advances possible in this area. Part 1 of this book deals with the problem of the calibration and auto-calibration of video captures. Part 2 is essentially concerned with the estimation of the relative object/capture position when a priori information is introduced (the CAD model of the object). Finally, Part 3 discusses the inference of density information and the shape recognition in images.
Titolo autorizzato: Visual perception through video imagery  Visualizza cluster
ISBN: 1-282-16494-5
9786612164941
0-470-61104-9
0-470-39362-9
Formato: Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione: Inglese
Record Nr.: 9910139468403321
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui
Serie: ISTE