Development of ICA and IVA Algorithms with Application to Medical Image Analysis
Zois Boukouvalas

TL;DR
This paper develops flexible ICA and IVA algorithms that incorporate statistical independence and sparsity, improving source separation in medical image analysis by accurately modeling data distributions.
Contribution
It introduces a unified framework combining independence and sparsity, along with new algorithms for ICA and IVA that utilize advanced PDF estimation techniques.
Findings
Enhanced separation performance with sparsity incorporation
Effective PDF estimation improves ICA/IVA accuracy
Unified framework balances independence and sparsity influences
Abstract
Independent component analysis (ICA) is a widely used BSS method that can uniquely achieve source recovery, subject to only scaling and permutation ambiguities, through the assumption of statistical independence on the part of the latent sources. Independent vector analysis (IVA) extends the applicability of ICA by jointly decomposing multiple datasets through the exploitation of the dependencies across datasets. Though both ICA and IVA algorithms cast in the maximum likelihood (ML) framework enable the use of all available statistical information in reality, they often deviate from their theoretical optimality properties due to improper estimation of the probability density function (PDF). This motivates the development of flexible ICA and IVA algorithms that closely adhere to the underlying statistical description of the data. Although it is attractive minimize the assumptions,…
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Taxonomy
MethodsIndependent Component Analysis
