外文翻译--最小方波在小波领域的展开
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1、 中文 3300 字 附录 A:英文原文 Least squares phase unwrapping in wavelet domain Abstract: Least squares phase unwrapping is one of the robust techniques used to solve two-dimensional phase unwrapping problems. However, owing to its sparse structure, the convergence rate is very slow, and some practical method
2、s have been applied to improve this condition. In this paper, a new method for solving the least squares two-dimensional phase unwrapping problem is presented. This technique is based on the multiresolution representation of a linear system using the discrete wavelet transform. By applying the wavel
3、et transform, the original system is decomposed into its coarse and fine resolution levels. Fast convergence in separate coarse resolution levels makes the overall system convergence very fast. 1 introduction Two-dimensional phase unwrapping is an important processing step in some coherent imaging a
4、pplications, such as synthetic aperture radar interferometry(InSAR) and magnetic resonance imaging(MRI).In these processes, three-dimensional information of the measured objects can be extracted from the phase of the sensed signals ,However, the obseryed phase data are wrapped principal values, whic
5、h are restricted in a 2 modulus ,and they must be unwrapped to their true absolute phase values .This is the task of the phase unwrapping, especially for two-dimensional problems. The basic assumption of the general phase unwrapping methods is that the discrete derivatives of the unwrapped phase at
6、all grid points are less than in absolute value .With this assumption satisfied ,the absolute phase can be reconstructed perfectly by integrating the partial derivatives of the wrapped phase data. In the general case, however, it is not possible to recover unambiguously the absolute phase from the m
7、easured wrapped phase which is usually corrupted by noise or aliasing effects such as shadow, layover, etc. In such cases, the basic assumption is violated and the simple integration procedure cannot be applied owing to the phase inconsistencies caused by the contaminations. After Goldstein-et al in
8、troduced the concept of residues in the two-dimensional phase unwrapping problem of InSAR, many phase unwrapping approaches to cope with this problem have been investigated. Path-following (or integration-based) methods and least squares methods are the most representative two basic classes in this
9、field. There have also been some other approaches such as Green methods, Bayesian regularization methods ,image processing-based methods, and model-based methods. Least squares phase unwrapping ,established by Ghiglia and Romero, is one of the most robust techniques to solve the two-dimensional phas
10、e unwrapping problem. This method obtains an unwrapped solution by minimizing the differences between the partial derivatives of the wrapped phase data and the unwrapped solution .Least squares method is divided into unweighted and weighted least squares phase unwrapping. To isolate the phase incons
11、istencies, a weighted least squares method should be used, which depresses the contamination effects by using the weighting arrays. Green methods and Bayesian methods are also based on the least squares scheme .But these methods are different from those of ,in the concept of phase inconsistency trea
12、tment. Thus, this paper concerns only the least squares phase unwrapping problem of Ghiglias category. The least squares method is well-defined mathematically and equivalent to the solution of Poissons partial differential equation, which can be expressed as a sparse linear equation. anterior method
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