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Quatitative Comparison and Analysis of Brain Image Registration Using Frequency-Adaptive Wavelet Shrinkage
Ivo Dinov Department of Statistics, UCLA
Michael S. Mega
Paul M. Thompson
Roger P. Woods
De Witt L. Sumners
Elizabeth L. Sowell
Arthur W. Toga

Download the Paper (378 K, PDF file) - March 1, 2002 Tell a colleague about it.
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ABSTRACT:
In the field of template-based medical image analysis, image registration and normalization are frequently used to eval- uate and interpret data in a standard template or reference atlas space. Despite the large number of image-registration (warping) techniques developed recently in the literature, only a few studies have been undertaken to numerically characterize and compare various alignment methods. In this paper, we introduce a new approach for analyzing image registration based on a selective- wavelet reconstruction technique using a frequency-adaptive wavelet shrinkage. We study four polynomial-based and two higher complexity nonaffine warping methods applied to groups of stereotaxic human brain structural (magnetic resonance imaging) and functional (positron emission tomography) data. Depending upon the aim of the image registration, we present several warp classification schemes. Our method uses a concise representation of the native and resliced (pre- and post-warp) data in compressed wavelet space to assess quality of registration. This technique is com- putationally inexpensive and utilizes the image compression, image enhancement, and denoising characteristics of the wavelet-based function representation, as well as the optimality properties of frequency-dependent wavelet shrinkage.

SUGGESTED CITATION:
Ivo Dinov Department of Statistics, UCLA; Michael S. Mega; Paul M. Thompson; Roger P. Woods; De Witt L. Sumners; Elizabeth L. Sowell; and Arthur W. Toga, "Quatitative Comparison and Analysis of Brain Image Registration Using Frequency-Adaptive Wavelet Shrinkage" (March 1, 2002). Department of Statistics, UCLA. Department of Statistics Papers. Paper 2002030101.
http://repositories.cdlib.org/uclastat/papers/2002030101

 
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