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Heterogeneous spatial data : fusion, modeling, and analysis for GIS applications / Giuseppe Patanè and Michela Spagnuolo, editors, CNR-IMATI.

Colaborador(es): Tipo de material: TextoTextoSeries Synthesis lectures on visual computing ; # 24.Editor: San Rafael, California : Morgan & Claypool Publishers, 2016Fecha de copyright: ©2016Descripción: xxv, 129 páginas : ilustraciones ; 24 cmTipo de contenido:
  • texto
Tipo de medio:
  • sin mediación
Tipo de soporte:
  • volumen
ISBN:
  • 9781627056700
  • 162705670X
Tema(s): Clasificación LoC:
  • QA 402 H47.2016
Contenidos:
1. Spatio-temporal data fusion / Roderik Lindenbergh, Roberto Giachetta, Giuseppe Patanè -- 1.1 Geospatial data: acquisition and properties -- 1.2 Spatio-temporal data fusion -- 1.3 Data alignment: registration methods -- 1.3.1 Direct georeferencing -- 1.3.2 Target and feature-based registration -- 1.3.3 Low-level feature matching -- 1.3.4 Examples: -- 1.4 Harmonize support: interpolation methods -- 1.4.1 Deterministic methods -- 1.4.2 Stochastic methods -- 1.5 Satellite time series analysis -- 1.5.1 Improving spatial and temporal resolution -- 1.5.2 Estimating missing data -- 1.5.3 Vegetation monitoring -- 1.6 Spatio-temporal data access methods -- 1.7 Discussion: sensors, software, and practical issues.
2. Spatial and environmental data approximation / Vibeke Skytt, Giuseppe Patanè, Oliver Barrowclough, Tor Dokken, Michela Spagnuolo -- 2.1 Data approximation -- 2.2 Spline representations and approximations -- 2.2.1 Parameterization -- 2.2.2 Tensor product splines -- 2.2.3 Locally refined splines -- 2.2.4 Spline approximations -- 2.2.5 Adapting to boundaries and features -- 2.3 Meshless approximations -- 2.3.1 Moving least-squares surfaces -- 2.3.2 Implicit approximation with radial basis functions -- 2.3.3 Kriging -- 2.3.4 Computational cost.
3. Feature extraction / Silvia Biasotti, Andrea Cerri, Giuseppe Patanè, Michela Spagnuolo -- 3.1 3D data analysis -- 3.1.1 Curvature evaluation -- 3.1.2 Primitive and curvature-based segmentation -- 3.1.3 3D feature descriptors -- 3.2 3D surfaces studied by means of scalar fields -- 3.2.1 Critical point-oriented characterization -- 3.2.2 Topological persistence -- 3.2.3 Contour-based characterization -- 3.2.4 Morse and Morse-Smale complexes and surface networks -- 3.2.5 Contour trees and Reeb graphs.
4. Applications to surface approximation and rainfall analysis / Giuseppe Patanè, Andrea Cerri, Vibeke Skytt, Simone Pittaluga, Silvia Biasotti, Davide Sobrero, Tor Dokken, Michela Spagnuolo -- 4.1 Surface approximation with LR B-splines -- 4.2 Approximation and analysis of rainfall data -- 4.3 Analysis of topological changes in GIS data.
5. Conclusions -- Bibliography -- Authors' biographies.
Resumen: New data acquisition techniques are emerging and are providing fast and efficient means for multidimensional spatial data collection. Airborne LIDAR surveys, SAR satellites, stereophotogrammetry and mobile mapping systems are increasingly used for the digital reconstruction of the environment. All these systems provide extremely high volumes of raw data, often enriched with other sensor data (e.g., beam intensity). Improving methods to process and visually analyze this massive amount of geospatial and user-generated data is crucial to increase the efficiency of organizations and to better manage societal challenges. Within this context, this book proposes an up-to-date view of computational methods and tools for spatio-temporal data fusion, multivariate surface generation, and feature extraction, along with their main applications for surface approximation and rainfall analysis. The book is intended to attract interest from different fields, such as computer vision, computer graphics, geomatics, and remote sensing, working on the common goal of processing 3D data. To this end, it presents and compares methods that process and analyze the massive amount of geospatial data in order to support better management of societal challenges through more timely and better decision making, independent of a specific data modeling paradigm (e.g., 2D vector data, regular grids or 3D point clouds). We also show how current research is developing from the traditional layered approach, adopted by most GIS softwares, to intelligent methods for integrating existing data sets that might contain important information on a geographical area and environmental phenomenon. These services combine traditional map-oriented visualization with fully 3D visual decision support methods and exploit semantics-oriented information (e.g., a-priori knowledge, annotations, segmentations) when processing, merging, and integrating big pre-existing data sets.
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Tipo de ítem Biblioteca actual Colección Signatura topográfica Copia número Estado Fecha de vencimiento Código de barras
Libros Biblioteca Francisco Xavier Clavigero Acervo Acervo General QA 402 H47.2016 (Navegar estantería(Abre debajo)) ej. 1 Disponible UIA167434

Incluye bibliografía (páginas 101-128).

1. Spatio-temporal data fusion / Roderik Lindenbergh, Roberto Giachetta, Giuseppe Patanè -- 1.1 Geospatial data: acquisition and properties -- 1.2 Spatio-temporal data fusion -- 1.3 Data alignment: registration methods -- 1.3.1 Direct georeferencing -- 1.3.2 Target and feature-based registration -- 1.3.3 Low-level feature matching -- 1.3.4 Examples: -- 1.4 Harmonize support: interpolation methods -- 1.4.1 Deterministic methods -- 1.4.2 Stochastic methods -- 1.5 Satellite time series analysis -- 1.5.1 Improving spatial and temporal resolution -- 1.5.2 Estimating missing data -- 1.5.3 Vegetation monitoring -- 1.6 Spatio-temporal data access methods -- 1.7 Discussion: sensors, software, and practical issues.

2. Spatial and environmental data approximation / Vibeke Skytt, Giuseppe Patanè, Oliver Barrowclough, Tor Dokken, Michela Spagnuolo -- 2.1 Data approximation -- 2.2 Spline representations and approximations -- 2.2.1 Parameterization -- 2.2.2 Tensor product splines -- 2.2.3 Locally refined splines -- 2.2.4 Spline approximations -- 2.2.5 Adapting to boundaries and features -- 2.3 Meshless approximations -- 2.3.1 Moving least-squares surfaces -- 2.3.2 Implicit approximation with radial basis functions -- 2.3.3 Kriging -- 2.3.4 Computational cost.

3. Feature extraction / Silvia Biasotti, Andrea Cerri, Giuseppe Patanè, Michela Spagnuolo -- 3.1 3D data analysis -- 3.1.1 Curvature evaluation -- 3.1.2 Primitive and curvature-based segmentation -- 3.1.3 3D feature descriptors -- 3.2 3D surfaces studied by means of scalar fields -- 3.2.1 Critical point-oriented characterization -- 3.2.2 Topological persistence -- 3.2.3 Contour-based characterization -- 3.2.4 Morse and Morse-Smale complexes and surface networks -- 3.2.5 Contour trees and Reeb graphs.

4. Applications to surface approximation and rainfall analysis / Giuseppe Patanè, Andrea Cerri, Vibeke Skytt, Simone Pittaluga, Silvia Biasotti, Davide Sobrero, Tor Dokken, Michela Spagnuolo -- 4.1 Surface approximation with LR B-splines -- 4.2 Approximation and analysis of rainfall data -- 4.3 Analysis of topological changes in GIS data.

5. Conclusions -- Bibliography -- Authors' biographies.

New data acquisition techniques are emerging and are providing fast and efficient means for multidimensional spatial data collection. Airborne LIDAR surveys, SAR satellites, stereophotogrammetry and mobile mapping systems are increasingly used for the digital reconstruction of the environment. All these systems provide extremely high volumes of raw data, often enriched with other sensor data (e.g., beam intensity). Improving methods to process and visually analyze this massive amount of geospatial and user-generated data is crucial to increase the efficiency of organizations and to better manage societal challenges. Within this context, this book proposes an up-to-date view of computational methods and tools for spatio-temporal data fusion, multivariate surface generation, and feature extraction, along with their main applications for surface approximation and rainfall analysis. The book is intended to attract interest from different fields, such as computer vision, computer graphics, geomatics, and remote sensing, working on the common goal of processing 3D data. To this end, it presents and compares methods that process and analyze the massive amount of geospatial data in order to support better management of societal challenges through more timely and better decision making, independent of a specific data modeling paradigm (e.g., 2D vector data, regular grids or 3D point clouds). We also show how current research is developing from the traditional layered approach, adopted by most GIS softwares, to intelligent methods for integrating existing data sets that might contain important information on a geographical area and environmental phenomenon. These services combine traditional map-oriented visualization with fully 3D visual decision support methods and exploit semantics-oriented information (e.g., a-priori knowledge, annotations, segmentations) when processing, merging, and integrating big pre-existing data sets.