Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10369966 | Digital Signal Processing | 2005 | 44 Pages |
Abstract
In nonparametric local polynomial regression the adaptive selection of the scale parameter (window size/bandwidth) is a key problem. Recently new efficient algorithms, based on Lepski's approach, have been proposed in mathematical statistics for spatially adaptive varying scale denoising. A common feature of these algorithms is that they form test-estimates yËh different by the scale hâH and special statistical rules are exploited in order to select the estimate with the best pointwise varying scale. In this paper a novel multiresolution (MR) local polynomial regression is proposed. Instead of selection of the estimate with the best scale h a nonlinear estimate is built using all of the test-estimates yËh. The adaptive estimation consists of two steps. The first step transforms the data into noisy spectrum coefficients (MR analysis). On the second step, this noisy spectrum is filtered by the thresholding procedure and used for estimation (MR synthesis).
Keywords
Related Topics
Physical Sciences and Engineering
Computer Science
Signal Processing
Authors
Vladimir Katkovnik,