Paper
6 June 2011 Learned fusion operators based on matrix completion
Kelly K. D. Risko, Charles F. Hester
Author Affiliations +
Abstract
The efficient and timely management of imagery captured in the battlefield requires methods capable of searching the voluminous databases and extracting highly symbolic concepts. When processing images, a semantic and definition gap exists between machine representations and the user's language. Based on matrix completion techniques, we present a fusion operator that fuses imagery and expert knowledge provided by user inputs during post analysis. Specifically, an information matrix is formed from imagery and a class map as labeled by an expert. From this matrix an image operator is derived for the extraction/prediction of information from future imagery. We will present results using this technique on single mode data.
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Kelly K. D. Risko and Charles F. Hester "Learned fusion operators based on matrix completion", Proc. SPIE 8064, Multisensor, Multisource Information Fusion: Architectures, Algorithms, and Applications 2011, 80640K (6 June 2011); https://doi.org/10.1117/12.885011
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KEYWORDS
Tolerancing

Image fusion

Matrices

Reconstruction algorithms

Convolution

Data fusion

Databases

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