29th Applied Imagery Pattern Recognition Workshop (AIPR'00) Parallel Image Classification on the HIVE Washington, D.C. October 16-October 18 ISBN: 0-7695-0978-9
Remotely sensed imagery represents a growing source of information to many practical applications. Technologies to rapidly process imagery data into useful information products has not kept pace with the rapidly growing volume and complexity of imagery data increasingly available from Government and commercial sources. Significant processing speed improvements have been achieved by implementation of classification methods on the Highly-parallel Integrated Virtual Environment (HIVE) -a Beowulf class system using Parallel Virtual Machine (PVM) software. This paper discusses our parallel processing architecture and how three different clas-sification algorithms performed in this computing environ-ment. Also discussed are conclusions and recommendations for future work to apply these techniques to more complex data and further improve the processing speeds.
Index Terms:
theHIVE, classification, parallel algorithms, Neural Networks, Gaussian Maximum Likelihood Classifier, Polynomial Discriminant Method, Mixture Model Neural Network, MIMD, SPMD.
Citation:
M. Smit, J. Garegnani, M. Bechdol, S. Chettri, "Parallel Image Classification on the HIVE," aipr, pp.39, 29th Applied Imagery Pattern Recognition Workshop (AIPR'00), 2000 Usage of this product signifies your acceptance of the Terms of Use. | |||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||