Progress in geospatial analysis
著者
書誌事項
Progress in geospatial analysis
Springer, c2012
- : hbk
- タイトル別名
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Springer GIS/cartography
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注記
Includes bibliographical references and index
内容説明・目次
内容説明
This book examines current trends and developments in the methods and applications of geospatial analysis and highlights future development prospects. It provides a comprehensive discussion of remote sensing- and geographical information system (GIS)-based data processing techniques, current practices, theories, models, and applications of geospatial analysis. Data acquisition and processing techniques such as remote sensing image selections, classifications, accuracy assessments, models of GIS data, and spatial modeling processes are the focus of the first part of the book. In the second part, theories and methods related to fuzzy sets, spatial weights and prominence, geographically weighted regression, weight of evidence, Markov-cellular automata, artificial neural network, agent-based simulation, multi-criteria evaluation, analytic hierarchy process, and a GIS network model are included. Part three presents selected best practices in geospatial analysis. The chapters, all by expert authors, are arranged so that readers who are new to the field will gain an overview and important insights. Those readers who are already practitioners will gain from the advanced and updated materials and state-of-the-art developments in geospatial analysis.
目次
From the Contents: Part I Geospatial Data Acquisition and Processing.- Multispectral Classification of Remote Sensing Data for Geospatial Analysis.- Part II Geospatial Theories and Methods.- Fuzzy Set Theory in Geospatial Analysis.- Spatial Prominence and Spatial Weights Matrix in Geospatial Analysis.- Geographically Weighted Regression in Geospatial Analysis.- Weight of Evidence in Geospatial Analysis.- Markov-Cellular Automata in Geospatial Analysis.- Multilayer Perceptron Neural Networks in Geospatial Analysis.- Part III Applications in Geospatial Analysis.- Urban Growth Modeling Using Bayesian Probability Function.- Land Suitability Assessment Using a Fuzzy Multi-Criteria Evaluation.- Neighborhood Interaction in Urban Land-Use Changes Using Cellular Automata-Based.
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