Lin Yong, Hardie Russell C, Sheng Qin, Shao Min, Barner Kenneth E
University of Dayton, Ohio 45469-0226, USA.
Appl Opt. 2006 Apr 20;45(12):2697-706. doi: 10.1364/ao.45.002697.
Soft-partition-weighted-sum (Soft-PWS) filters are a class of spatially adaptive moving-window filters for signal and image restoration. Their performance is shown to be promising. However, optimization of the Soft-PWS filters has received only limited attention. Earlier work focused on a stochastic-gradient method that is computationally prohibitive in many applications. We describe a novel radial basis function interpretation of the Soft-PWS filters and present an efficient optimization procedure. We apply the filters to the problem of noise reduction. The experimental results show that the Soft-PWS filter outperforms the standard partition-weighted-sum filter and the Wiener filter.