Probabilistic Identification and Estimation of Noise (PIESNO): a self-consistent approach and its applications in MRI.

نویسندگان

  • Cheng Guan Koay
  • Evren Ozarslan
  • Carlo Pierpaoli
چکیده

Data analysis in MRI usually entails a series of processing procedures. One of these procedures is noise assessment, which in the context of this work, includes both the identification of noise-only pixels and the estimation of noise variance (standard deviation). Although noise assessment is critical to many MRI processing techniques, the identification of noise-only pixels has received less attention than has the estimation of noise variance. The main objectives of this paper are, therefore, to demonstrate (a) that the identification of noise-only pixels has an important role to play in the analysis of MRI data, (b) that the identification of noise-only pixels and the estimation of noise variance can be combined into a coherent framework, and (c) that this framework can be made self-consistent. To this end, we propose a novel iterative approach to simultaneously identify noise-only pixels and estimate the noise standard deviation from these identified pixels in a commonly used data structure in MRI. Experimental and simulated data were used to investigate the feasibility, the accuracy and the stability of the proposed technique.

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عنوان ژورنال:
  • Journal of magnetic resonance

دوره 199 1  شماره 

صفحات  -

تاریخ انتشار 2009