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RANSAC / Mathematical optimization / Least squares / Normal distribution / Total least squares / Linear least squares / Statistics / Regression analysis / Robust statistics
Date: 2005-09-24 10:06:15
RANSAC
Mathematical optimization
Least squares
Normal distribution
Total least squares
Linear least squares
Statistics
Regression analysis
Robust statistics

Graphics and Image Processing

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