On the regularizing behavior of the SDA and SDC gradient methods in the solution of linear ill-posed problems
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摘要
We analyze the regularization properties of two recently proposed gradient methods, SDA and SDC, applied to discrete linear inverse problems. By studying their filter factors, we show that the tendency of these methods to eliminate first the eigencomponents of the gradient corresponding to large singular values allows to reconstruct the most significant part of the solution, thus yielding a useful filtering effect. This behavior is confirmed by numerical experiments performed on some image restoration problems. Furthermore, the experiments show that, for severely ill-conditioned problems and high noise levels, the SDA and SDC methods can be competitive with the Conjugate Gradient (CG) method, since they are slightly slower than CG, but exhibit a better semiconvergence behavior.
论文关键词:Discrete linear inverse problems,Least squares problems,Iterative regularization,Gradient methods
论文评审过程:Received 21 September 2014, Revised 12 June 2015, Available online 10 February 2016, Version of Record 26 February 2016.
论文官网地址:https://doi.org/10.1016/j.cam.2016.01.007