서지주요정보
Remote sensing image processing [electronic resource]
서명 / 저자 Remote sensing image processing [electronic resource] / Gustavo Camps-Valls ... [et al.].
저자명 Camps-Valls, Gustavo
발행사항 San Rafael, Calif. (1537 Fourth Street, San Rafael, CA 94901 USA) : Morgan & Claypool, c2012.
총서명 Synthesis lectures on image, video, and multimedia processing, 1559-8144 ; # 12
Online Access http://dx.doi.org/10.2200/S00392ED1V01Y201107IVM012URL

서지기타정보

서지기타정보
청구기호 G70.4 .R457 2012
형태사항 1 electronic text (xvi, 176 p.) : ill., digital file.
언어 English
일반주기 Part of: Synthesis digital library of engineering and computer science.
Series from website.
서지주기 Includes bibliographical references (p. 123-170) and index.
내용 Preface -- Acknowledgments -- 1. Remote sensing from earth observation satellites -- 1.1 Introduction -- 1.1.1 Earth observation, spectroscopy and remote sensing -- 1.1.2 Types of remote sensing instruments -- 1.1.3 Applications of remote sensing -- 1.1.4 The remote sensing system -- 1.2 Fundamentals of optical remote sensing -- 1.2.1 The electromagnetic radiation -- 1.2.2 Solar irradiance -- 1.2.3 Earth atmosphere -- 1.2.4 At-sensor radiance -- 1.3 Multi and hyperspectral sensors -- 1.3.1 Spatial, spectral and temporal resolutions -- 1.3.2 Optical sensors and platforms -- 1.3.3 How do images look like? -- 1.4 Remote sensing pointers -- 1.4.1 Institutions -- 1.4.2 Journals and conferences -- 1.4.3 Remote sensing companies -- 1.4.4 Software packages -- 1.4.5 Data formats and repositories -- 1.5 Summary -- 2. The statistics of remote sensing images -- 2.1 Introduction -- 2.2 Second-order spatio-spectral regularities in hyperspectral images -- 2.2.1 Separate spectral and spatial redundancy -- 2.2.2 Joint spatio-spectral smoothness -- 2.3 Application example to coding IASI data -- 2.4 Higher order statistics -- 2.5 Summary -- 3. Remote sensing feature selection and extraction -- 3.1 Introduction -- 3.2 Feature selection -- 3.2.1 Filter methods -- 3.2.2 Wrapper methods -- 3.2.3 Feature selection example -- 3.3 Feature extraction -- 3.3.1 Linear methods -- 3.3.2 Nonlinear methods -- 3.3.3 Feature extraction examples -- 3.4 Physically based spectral features -- 3.4.1 Spectral indices -- 3.4.2 Spectral feature extraction examples -- 3.5 Spatial and contextual features -- 3.5.1 Convolution filters -- 3.5.2 Co-occurrence textural features -- 3.5.3 Markov random fields -- 3.5.4 Morphological filters -- 3.5.5 Spatial transforms -- 3.5.6 Spatial feature extraction example -- 3.6 Summary -- 4. Classification of remote sensing images -- 4.1 Introduction -- 4.1.1 The classification problem: definitions -- 4.1.2 Datasets considered -- 4.1.3 Measures of accuracy -- 4.2 Land-cover mapping -- 4.2.1 Supervised methods -- 4.2.2 Unsupervised methods -- 4.2.3 A supervised classification example -- 4.3 Change detection -- 4.3.1 Unsupervised change detection -- 4.3.2 Supervised change detection -- 4.3.3 A multiclass change detection example -- 4.4 Detection of anomalies and targets -- 4.4.1 Anomaly detection -- 4.4.2 Target detection -- 4.4.3 A target detection example -- 4.5 New challenges -- 4.5.1 Semisupervised learning -- 4.5.2 A semisupervised learning example -- 4.5.3 Active learning -- 4.5.4 An active learning example -- 4.5.5 Domain adaptation -- 4.6 Summary -- 5. Spectral mixture analysis -- 5.1 Introduction -- 5.1.1 Spectral unmixing steps -- 5.1.2 A survey of applications -- 5.1.3 Outline -- 5.2 Mixing models -- 5.2.1 Linear and nonlinear mixing models -- 5.2.2 The linear mixing model -- 5.3 Estimation of the number of end members -- 5.3.1 A comparative analysis of signal subspace algorithms -- 5.4 End member extraction -- 5.4.1 Extraction techniques -- 5.4.2 A note on the variability of end members -- 5.4.3 A comparative analysis of end member extraction algorithms -- 5.5 Algorithms for abundance estimation -- 5.5.1 Linear approaches -- 5.5.2 Nonlinear inversion -- 5.5.3 A comparative analysis of abundance estimation algorithms -- 5.6 Summary -- 6. Estimation of physical parameters -- 6.1 Introduction and principles -- 6.1.1 Forward and inverse modeling -- 6.1.2 Undetermination and ill-posed problems -- 6.1.3 Taxonomy of methods and outline -- 6.2 Statistical inversion methods -- 6.2.1 Land inversion models -- 6.2.2 Ocean inversion models -- 6.2.3 Atmosphere inversion models -- 6.3 Physical inversion techniques -- 6.3.1 Optimization inversion methods -- 6.3.2 Genetic algorithms -- 6.3.3 Look-up tables -- 6.3.4 Bayesian methods -- 6.4 Hybrid inversion methods -- 6.4.1 Regression trees -- 6.4.2 Neural networks -- 6.4.3 Kernel methods -- 6.5 Experiments -- 6.5.1 Land surface biophysical parameter estimation -- 6.5.2 Optical oceanic parameter estimation -- 6.5.3 Model inversion of atmospheric sounding data -- 6.6 Summary -- Bibliography -- Author biographies -- Index.
주제 Remote-sensing images.
remote sensing
Earth observation
spectroscopy
spectral signature
image statistics
computer vision
statistical learning
vision science
machine learning
feature selection and extraction
morphology
classification
pattern recognition
segmentation
regression
retrieval
biophysical parameter
unmixing
manifold learning
ISBN 9781608458202 (electronic bk.)
기타 표준번호 10.2200/S00392ED1V01Y201107IVM012
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