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A new trust region algorithm for image restoration 被引量:3

A new trust region algorithm for image restoration
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摘要 The image restoration problems play an important role in remote sensing and astronomical image analysis. One common method for the recovery of a true image from corrupted or blurred image is the least squares error (LSE) method. But the LSE method is unstable in practical applications. A popular way to overcome instability is the Tikhonov regularization. However, difficulties will encounter when adjusting the so-called regularization parameter a. Moreover, how to truncate the iteration at appropriate steps is also challenging. In this paper we use the trust region method to deal with the image restoration problem, meanwhile, the trust region subproblem is solved by the truncated Lanczos method and the preconditioned truncated Lanczos method. We also develop a fast algorithm for evaluating the Kronecker matrix-vector product when the matrix is banded. The trust region method is very stable and robust, and it has the nice property of updating the trust region automatically. This releases us from tedious finding the regularization parameters and truncation levels. Some numerical tests on remotely sensed images are given to show that the trust region method is promising. The image restoration problems play an important role in remote sensing and astronomical image analysis. One common method for the recovery of a true image from corrupted or blurred image is the least squares error (LSE) method. But the LSE method is unstable in practical applications. A popular way to overcome instability is the Tikhonov regularization. However, difficulties will encounter when adjusting the so-called regularization parameter α. Moreover, how to truncate the iteration at appropriate steps is also challenging. In this paper we use the trust region method to deal with the image restoration problem, meanwhile, the trust region subproblem is solved by the truncated Lanczos method and the preconditioned truncated Lanczos method. We also develop a fast algorithm for evaluating the Kronecker matrix-vector product when the matrix is banded. The trust region method is very stable and robust, and it has the nice property of updating the trust region automatically. This releases us from tedious finding the regularization parameters and truncation levels. Some numerical tests on remotely sensed images are given to show that the trust region method is promising.
出处 《Science China Mathematics》 SCIE 2005年第2期169-184,共16页 中国科学:数学(英文版)
基金 supported by the National Natural Science Foundation of China(Grant Nos.19731010 and 10231060) the Knowledge Innovation Program of CAS was supported by SRF for ROSS,SEM partially supported by the Special Innovation Fund for graduate students of CAS.
关键词 TRUST REGION algorithm image restoration LANCZOS method KRONECKER matrix-vector product preconditioning. trust region algorithm, image restoration, Lanczos method, Kronecker matrix-vector product, preconditioning.
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参考文献3

  • 1Yanfei Wang.On the regularity of trust region-cg algorithm: With application to deconvolution problem[J].Science in China Series A: Mathematics.2003(3)
  • 2Yanfei Wang,Yaxiang Yuan,Hongchao Zhang.A trust region-CG algorithm for deblurring problem in atmospheric image reconstruction[J].Science in China Series A: Mathematics.2002(6)
  • 3Steihaug,T.The Conjugate Gradient Method and Trust Regions in Large Scale Optimization, SLAM J[].Numer Anal.1983

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