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Evolving Network Architectures With Custom Computers For Multi-Spectral Feature Identification
Long Beach, Cailfornia July 12-July 14
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/EH.2001.937970The Third NASA/DoD Workshop on Evolva ...
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Reid Porter, Los Alamos National Laboratory
Maya Gokhale Neal Harvey, Los Alamos National Laboratory
Simon Perkins, Los Alamos National Laboratory
Cody Young, Los Alamos National Laboratory
Abstract: This paper investigates the design of evolvable FPGA circuits where the design space is severely constrained to an interconnected network of meaningful high-level operators. The specific design domain is image processing, especially pattern recognition in remotely sensed images. Preliminary experiments are reported that compare Neural Networks with a recently introduced variant known as Morphological Networks. A novel network node is then presented that is particularly suited to the problem of pattern recognition in multi-spectral data sets. More specifically, the node can exploit both spectral and spatial information, and implements both feature extraction and classification components of a typical image processing pipeline. Once trained, the network can be applied to large image data sets, or at the sensor to extract features of interest with two orders of magnitude speed-up compared to software implementations.
Citation:
Reid Porter, Maya Gokhale Neal Harvey, Simon Perkins, Cody Young, "Evolving Network Architectures With Custom Computers For Multi-Spectral Feature Identification," eh, pp.0261, The Third NASA/DoD Workshop on Evolvable Hardware, 2001
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