Title :
Adaptive data parallel methods for ecosystem monitoring
Author :
Turner, Charles J. ; Turner, Jennifer G.
Author_Institution :
Oasis Res. Center Inc., Tucson, AZ, USA
Abstract :
Biological diversity is decreasing at an alarming rate worldwide. Improved ecosystem monitoring can help detect problems in time to intervene. Earth orbiting satellites collecting terabytes of imagery daily, can support effective monitoring of many habitats. Data parallelism is ideal for many automated image analysis algorithms, but less natural for the complex spatial structure of most ecosystems. This paper presents a coarse-to-fine processing framework: based on a set of spatial transformations, that compact disconnected regions to achieve more efficient nested data parallelism. Experiments with a montane island ecosystem in southeast Arizona use Landsat TM data to characterize the processing framework the spatial transformations, and the feature extraction algorithms
Keywords :
ecology; environmental science computing; feature extraction; image recognition; parallel processing; Earth orbiting satellites; Landsat TM data; adaptive data parallel methods; automated image analysis algorithms; biological diversity; coarse-to-fine processing framework; ecosystem monitoring; feature extraction algorithms; montane island ecosystem; nested data parallelism; spatial transformations; Biology; Cultural differences; Earth; Ecosystems; Forestry; Hyperspectral sensors; Parallel processing; Remote monitoring; Satellites; Surface texture;
Conference_Titel :
Supercomputing '94., Proceedings
Conference_Location :
Washington, DC
Print_ISBN :
0-8186-6605-6
DOI :
10.1109/SUPERC.1994.344291