TY - GEN
T1 - Knowledge discovery in urban environments from fused multi-dimensional imagery
AU - Merényi, Erzsébet
AU - Csathó, Beáta
AU - Tasdemir, Kadim
PY - 2007
Y1 - 2007
N2 - With all the exciting advances in sensor fusion and data interpretation technologies in recent years, including co-registration, 3-D surface reconstruction, object recognition, spatial reasoning, and more, high-quality detailed and precise segmentation of remote sensing spectral images remains a much needed key componenent in the comprehensive analysis and understanding of surfaces. Urban surfaces are no exception. In fact, urban surfaces can represent more challenge than many other types because of the very large variety of materials concentrated in relatively small areas. Segmentation (unsupervised clustering) or supervised classification based on spectral signatures from multi- and hyperspectral imagery, or based on other multi-dimensional signatures from stacked disparate (multi-source) imagery, provide delineation of materials with various compositional and physical properties in a scene. Such a cluster or classification map lends critical support to further reasoning for accurate identification of surface objects and conditions. It is, therefore, imperative to develop methods whose data exploitation power matches that of the discriminating power of the data acquisition instrument We present a study of unsupervised segmentation, comparing the performances of ISODATA clustering and self-organized manifold learning on an urban image from a Daedalus multi-spectral scanner and on an AVIRIS hyperspectral image.
AB - With all the exciting advances in sensor fusion and data interpretation technologies in recent years, including co-registration, 3-D surface reconstruction, object recognition, spatial reasoning, and more, high-quality detailed and precise segmentation of remote sensing spectral images remains a much needed key componenent in the comprehensive analysis and understanding of surfaces. Urban surfaces are no exception. In fact, urban surfaces can represent more challenge than many other types because of the very large variety of materials concentrated in relatively small areas. Segmentation (unsupervised clustering) or supervised classification based on spectral signatures from multi- and hyperspectral imagery, or based on other multi-dimensional signatures from stacked disparate (multi-source) imagery, provide delineation of materials with various compositional and physical properties in a scene. Such a cluster or classification map lends critical support to further reasoning for accurate identification of surface objects and conditions. It is, therefore, imperative to develop methods whose data exploitation power matches that of the discriminating power of the data acquisition instrument We present a study of unsupervised segmentation, comparing the performances of ISODATA clustering and self-organized manifold learning on an urban image from a Daedalus multi-spectral scanner and on an AVIRIS hyperspectral image.
UR - https://www.scopus.com/pages/publications/34748844548
U2 - 10.1109/URS.2007.371860
DO - 10.1109/URS.2007.371860
M3 - Conference contribution
AN - SCOPUS:34748844548
SN - 1424407125
SN - 9781424407125
T3 - 2007 Urban Remote Sensing Joint Event, URS
BT - 2007 Urban Remote Sensing Joint Event, URS
T2 - 2007 Urban Remote Sensing Joint Event, URS
Y2 - 11 April 2007 through 13 April 2007
ER -