An analysis dictionary learning algorithm under a noisy data model with orthogonality constraint.
Ye Zhang,Tenglong Yu,Wenwu Wang +2 more
TL;DR: This work proposes a novel optimization model and an iterative algorithm to learn the analysis dictionary, where the observed data is directly employed to compute the approximate analysis sparse representation of the original signals and enforce an orthogonality constraint on the optimization criterion to avoid the trivial solutions.
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Abstract: Two common problems are often encountered in analysis dictionary learning (ADL) algorithms. The first one is that the original clean signals for learning the dictionary are assumed to be known, which otherwise need to be estimated from noisy measurements. This, however, renders a computationally slow optimization process and potentially unreliable estimation (if the noise level is high), as represented by the Analysis K-SVD (AK-SVD) algorithm. The other problem is the trivial solution to the dictionary, for example, the null dictionary matrix that may be given by a dictionary learning algorithm, as discussed in the learning overcomplete sparsifying transform (LOST) algorithm. Here we propose a novel optimization model and an iterative algorithm to learn the analysis dictionary, where we directly employ the observed data to compute the approximate analysis sparse representation of the original signals (leading to a fast optimization procedure) and enforce an orthogonality constraint on the optimization criterion to avoid the trivial solutions. Experiments demonstrate the competitive performance of the proposed algorithm as compared with three baselines, namely, the AK-SVD, LOST, and NAAOLA algorithms.
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Citations
•Journal Article
Research Advances on Dictionary Learning Models, Algorithms and Applications
TL;DR: The fundamental models and dictionary learning algorithms are introduced in detail in terms of synthesis dictionary, analysis dictionary, blind dictionary and Dictionary learning based on information complexity.
32
Accelerated Log-Regularized Convolutional Transform Learning and its Convergence Guarantee.
TL;DR: Wang et al. as discussed by the authors presented a new CTL framework with a log regularizer, which can not only obtain accurate representations but also yield strong sparsity, and provided a rigorous convergence analysis for the proposed algorithm under the accelerated PDCA.
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Speaker Recognition Based on Long-Term Acoustic Features With Analysis Sparse Representation
TL;DR: The long-term acoustic (LTA) feature for text-independent speaker recognition is introduced, which is a sparse presentation of the static features and dynamic information for the speaker’s speech.
Analysis dictionary learning using block coordinate descent framework with proximal operators
TL;DR: The main advantages of the proposed algorithms are their greater dictionary recovery ratios especially in the low-cosparsity case, and their faster running time of reaching the stable values of the dictionary recovery ratio and the recovery cosparsity compared with state-of-the-art algorithms.
7
Accelerated <i>Log</i>-Regularized Convolutional Transform Learning and Its Convergence Guarantee
01 Oct 2022
TL;DR: Wang et al. as mentioned in this paper presented a new CTL framework with a log regularizer, which can not only obtain accurate representations but also yield strong sparsity, and provided a rigorous convergence analysis for the proposed algorithm under the accelerated PDCA.
4
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Emmanuel J. Candès,Terence Tao +1 more
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•Posted Content
Decoding by Linear Programming
Emmanuel J. Candès,Terence Tao +1 more
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