Data di Pubblicazione:
2016
Abstract:
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. ?e 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.
Tipologia CRIS:
03.12 Curatela di monografia/trattato scientifico
Keywords:
heterogeneous spatial data; spatio-temporal data fusion; multi-variate surface generation; feature extraction; GIS applications
Elenco autori:
Spagnuolo, Michela; Patane', Giuseppe
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