Title :
Information Content of Very-High-Resolution SAR Images: Semantics, Geospatial Context, and Ontologies
Author :
Dumitru, Corneliu Octavian ; Shiyong Cui ; Schwarz, Gottfried ; Datcu, Mihai
Author_Institution :
Remote Sensing Technol. Inst. (IMF), German Aerosp. Center (DLR), Wessling, Germany
Abstract :
Currently, the amount of collected Earth Observation (EO) data is increasing considerably with a rate of several Terabytes of data per day. As a consequence of this increasing data volume, new concepts for exploration and information retrieval are urgently needed. To this end, we propose to explore satellite image data via an image information mining (IIM) approach in which the main steps are feature extraction, classification, semantic annotation, and interactive query processing. This leads to a new process chain and a robust taxonomy for the retrieved categories capitalizing on human interaction and judgment. We concentrated on land cover categories that can be retrieved from high-resolution synthetic aperture radar (SAR) images of the spaceborne TerraSAR-X instrument, where we annotated different urban areas all over the world and defined a taxonomy element for each prevailing surface cover category. The annotation resulted from a test dataset comprising more than 100 scenes covering diverse areas of Africa, Asia, Europe, the Middle East, and North and South America. The scenes were grouped into several collections with similar source areas and each collection was processed separately in order to discern regional characteristics. In the first processing step, each scene was tiled into patches. Then the features were extracted from each patch by a Gabor filter bank and a support vector machine with relevance feedback classifying the feature sets into user-oriented land cover categories. Finally, the categories were semantically annotated using Google Earth for ground truthing. The annotation followed a multilevel approach that allowed the fusion of information being visible on different resolution levels. The novelty of this paper lies in the fact that a semantic annotation was performed with a large number of high-resolution radar images that allowed the definition of more than 850 surface cover categories. This opens the way toward an automated identification - nd classification of urban areas, infrastructure (e.g., airports), geographic objects (e.g., mountains), industrial installations, military compounds, vegetation, and agriculture. Applications that may result from this work can be a semantic catalog of urban images to be used in crisis situations or after a disaster. In addition, the proposed taxonomies can become a basis for building a semantic catalog of satellite images. Finally, we defined four powerful types of high-level queries. Querying on such high levels provides new opportunities for users to search an image database for specific parameters or semantic relationships.
Keywords :
Gabor filters; data mining; feature extraction; geophysical image processing; image classification; image fusion; image resolution; image retrieval; land cover; ontologies (artificial intelligence); radar imaging; remote sensing by radar; support vector machines; synthetic aperture radar; terrain mapping; visual databases; Africa; Asia; Europe; Gabor filter bank; Google Earth; Middle East; North America; South America; agriculture; collected Earth Observation data; crisis situations; data volume; disaster; feature classification; feature extraction; geographic objects; geospatial context; ground truthing; high-level queries; high-resolution radar image fusion; high-resolution synthetic aperture radar images; human interaction; human judgment; image database; image information mining approach; industrial installations; information content; information retrieval; infrastructure; interactive query processing; land cover categories; military compounds; ontologies; regional characteristics; satellite image data; semantic annotation; semantic catalog; semantic relationships; source areas; spaceborne TerraSAR-X instrument; support vector machine; surface cover categories; surface cover category; taxonomy element; urban area automated classification; urban area automated identification; urban images; user-oriented land cover categories; vegetation; very-high-resolution SAR images; Earth; Feature extraction; Remote sensing; Satellites; Semantics; Synthetic aperture radar; Taxonomy; Annotation; TerraSAR-X; classification; feature extraction; high-resolution images; indexing; ontologies; querying; semantic catalogs; synthetic aperture radar (SAR); taxonomies;