Pad, PedramUnser, Michael2014-06-022014-06-022014-06-02201310.1109/ICASSP.2013.6638735https://infoscience.epfl.ch/handle/20.500.14299/103919WOS:000329611505153Sinusoidal transforms such as the DCT are known to be optimal-that is, asymptotically equivalent to the Karhunen-Loeve transform (KLT)-for the representation of Gaussian stationary processes, including the classical AR(1) processes. While the KLT remains applicable for non-Gaussian signals, it loses optimality and, is outperformed by the independent-component analysis (ICA), which aims at producing the most-decoupled representation. In this paper, we consider an extension of the classical AR(1) model that is driven by symmetric-alpha-stable (S alpha S) noise which is either Gaussian (alpha = 2) or sparse (0 < alpha < 2). For the sparse (non-Gaussian) regime, we prove that an expansion in a proper wavelet basis (including the Haar transform) is much closer to the optimal orthogonal ICA solution than the classical Fourier-type representations. Our criterion for optimality, which favors independence, is the Kullback-Leibler divergence between the joint pdf of the original signal and the product of the marginals in the transformed domain. We also observe that, for very sparse AR(1) processes (alpha <= 1), the operator-like wavelet transform is indistinguishable from the ICA solution that is determined through numerical optimization.Operator-like waveletsIndependent component analysisAuto-regressive processesOn The Optimality Of Operator-Like Wavelets For Sparse Ar(1) Processestext::conference output::conference proceedings::conference paper