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On Globally Optimal Local Modeling: From Moving Least Squares to Over-parametrization
[chapter]
2012
Mathematics and Visualization
This paper discusses a variational methodology, which involves locally modeling of data from noisy samples, combined with global model parameter regularization. We show that this methodology encompasses many previously proposed algorithms, from the celebrated moving least squares methods to the globally optimal over-parametrization methods recently published for smoothing and optic flow estimation. However, the unified look at the range of problems and methods previously considered also
doi:10.1007/978-3-642-34141-0_17
fatcat:wq5w6iwxbbcnpmrudelmrfa2gy