MLLGMay 28, 2012

Learning Dictionaries with Bounded Self-Coherence

arXiv:1205.6210v250 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental improvement for signal processing applications like denoising and source separation.

The paper tackles the trade-off between high signal coherence and low self-coherence in dictionary learning for sparse coding, presenting a method that controls self-coherence to balance sparsity and approximation of an equiangular tight frame.

Sparse coding in learned dictionaries has been established as a successful approach for signal denoising, source separation and solving inverse problems in general. A dictionary learning method adapts an initial dictionary to a particular signal class by iteratively computing an approximate factorization of a training data matrix into a dictionary and a sparse coding matrix. The learned dictionary is characterized by two properties: the coherence of the dictionary to observations of the signal class, and the self-coherence of the dictionary atoms. A high coherence to the signal class enables the sparse coding of signal observations with a small approximation error, while a low self-coherence of the atoms guarantees atom recovery and a more rapid residual error decay rate for the sparse coding algorithm. The two goals of high signal coherence and low self-coherence are typically in conflict, therefore one seeks a trade-off between them, depending on the application. We present a dictionary learning method with an effective control over the self-coherence of the trained dictionary, enabling a trade-off between maximizing the sparsity of codings and approximating an equiangular tight frame.

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