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Statistical theory / Regression analysis / RANSAC / Bayesian inference / Least squares / Bayesian information criterion / Akaike information criterion / Outlier / Homography / Statistics / Robust statistics / Model selection
Date: 2004-10-26 00:29:04
Statistical theory
Regression analysis
RANSAC
Bayesian inference
Least squares
Bayesian information criterion
Akaike information criterion
Outlier
Homography
Statistics
Robust statistics
Model selection

Department of Electrical and Computer Systems Engineering Technical Report MECSE

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Source URL: www.ecse.monash.edu.au

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