Identifying Relevant Eigenimages - a Random Matrix Approach
classification
⚛️ physics.data-an
cond-mat.dis-nnphysics.med-phstat.ML
keywords
eigenmodesrandomrelevantdimensionalmatrixachievedanalysisapplied
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Dimensional reduction of high dimensional data can be achieved by keeping only the relevant eigenmodes after principal component analysis. However, differentiating relevant eigenmodes from the random noise eigenmodes is problematic. A new method based on the random matrix theory and a statistical goodness-of-fit test is proposed in this paper. It is validated by numerical simulations and applied to real-time magnetic resonance cardiac cine images.
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