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Equivalence Probability and Sparsity of Two Sparse Solutions in Sparse Representation

机译:稀疏表示中两个稀疏解的等价概率和稀疏性

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This paper discusses the estimation and numerical calculation of the probability that the 0-norm and 1-norm solutions of underdetermined linear equations are equivalent in the case of sparse representation. First, we define the sparsity degree of a signal. Two equivalence probability estimates are obtained when the entries of the 0-norm solution have different sparsity degrees. One is for the case in which the basis matrix is given or estimated, and the other is for the case in which the basis matrix is random. However, the computational burden to calculate these probabilities increases exponentially as the number of columns of the basis matrix increases. This computational complexity problem can be avoided through a sampling method. Next, we analyze the sparsity degree of mixtures and establish the relationship between the equivalence probability and the sparsity degree of the mixtures. This relationship can be used to analyze the performance of blind source separation (BSS). Furthermore, we extend the equivalence probability estimates to the small noise case. Finally, we illustrate how to use these theoretical results to guarantee a satisfactory performance in underdetermined BSS.
机译:本文讨论了在稀疏表示的情况下,欠定线性方程组的0范数和1范数解相等的概率的估计和数值计算。首先,我们定义信号的稀疏度。当0范数解的条目具有不同的稀疏度时,将获得两个等价概率估计。一种用于给定或估计基本矩阵的情况,另一种用于基本矩阵是随机的情况。但是,随着基础矩阵的列​​数增加,计算这些概率的计算负担成倍增加。通过采样方法可以避免这种计算复杂性问题。接下来,我们分析混合物的稀疏度,并建立等价概率与混合物稀疏度之间的关系。此关系可用于分析盲源分离(BSS)的性能。此外,我们将等价概率估计扩展到小噪声情况。最后,我们说明了如何利用这些理论结果来保证在欠定的BSS中具有令人满意的性能。

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