Title :
Compressed hyperspectral imagery for forestry
Author :
Dyk, Andrew ; Goodenough, David G. ; Thompson, Suzanne ; Nadeau, Christian ; Hollinger, Allan ; Qian, Shen-En
Author_Institution :
Pacific Forestry Centre, Natural Resources Canada, Victoria, BC, Canada
Abstract :
Various compression schemes have been suggested for storage and distribution of hyperspectral remotely sensed data. Hyperspectral forestry applications that rely on the measurement of subtle variations in the spectral signature of the forest canopy can be affected by modification of the spectra induced by compression. As part of an experiment for the Canadian Space Agency (CSA), Hyperion data cubes acquired over the Greater Victoria Watershed District (GVWD) were compressed using the Successive Approximation Multi-stage Vector Quantization (SAMVQ) and Hierarchical Self-Organizing Cluster Vector Quantization (HSOCVQ) algorithms developed by CSA. The data were compressed using compression ratios 10:1 and 20:1 and were returned uncompressed. The data cubes were classified into forest species using the same supervised classification methodology as applied to the original data. The classification accuracies were compared. For some applications, one can achieve significant reductions in data volume through compression. Of the compression algorithms and ratios tested, SAMVQ 10:1 has the least overall effect but still reduces classification accuracies on difficult to separate classes. While uncompressed data are preferred, SAMVQ 10:1 compression may be suitable for forest inventory.
Keywords :
data compression; forestry; geophysical signal processing; geophysical techniques; image coding; British Columbia; CSA; Canada; Canadian Space Agency; EO-1; Greater Victoria Watershed District; HSOCVQ algorithm; Hierarchical Self-Organizing Cluster Vector Quantization; Hyperion data cubes; SAMVQ algorithm; Successive Approximation Multi-stage Vector Quantization; classification accuracy; compressed imagery; data compression schemes; data distribution; data storage; data volume; forest canopy; forest inventory; forestry; hyperspectral data; hyperspectral imagery; near-lossless compression; remotely sensed data; spectral signature; vector quantization; Application software; Clustering algorithms; Compression algorithms; Computer science; Forestry; Hyperspectral imaging; Hyperspectral sensors; Image coding; Testing; Vector quantization;
Conference_Titel :
Geoscience and Remote Sensing Symposium, 2003. IGARSS '03. Proceedings. 2003 IEEE International
Print_ISBN :
0-7803-7929-2
DOI :
10.1109/IGARSS.2003.1293754