Boscolo Riccardo, Pan Hong, Roychowdhury Vwani P
Electrical Engineering Department, University of California, Los Angeles, CA 90095, USA.
IEEE Trans Neural Netw. 2004 Jan;15(1):55-65. doi: 10.1109/tnn.2003.820667.
In this paper, we introduce a novel independent component analysis (ICA) algorithm, which is truly blind to the particular underlying distribution of the mixed signals. Using a nonparametric kernel density estimation technique, the algorithm performs simultaneously the estimation of the unknown probability density functions of the source signals and the estimation of the unmixing matrix. Following the proposed approach, the blind signal separation framework can be posed as a nonlinear optimization problem, where a closed form expression of the cost function is available, and only the elements of the unmixing matrix appear as unknowns. We conducted a series of Monte Carlo simulations, involving linear mixtures of various source signals with different statistical characteristics and sample sizes. The new algorithm not only consistently outperformed all state-of-the-art ICA methods, but also demonstrated the following properties: 1) Only a flexible model, capable of learning the source statistics, can consistently achieve an accurate separation of all the mixed signals. 2) Adopting a suitably designed optimization framework, it is possible to derive a flexible ICA algorithm that matches the stability and convergence properties of conventional algorithms. 3) A nonparametric approach does not necessarily require large sample sizes in order to outperform methods with fixed or partially adaptive contrast functions.
在本文中,我们介绍了一种新颖的独立成分分析(ICA)算法,该算法对混合信号的特定潜在分布完全不依赖。利用非参数核密度估计技术,该算法同时执行源信号未知概率密度函数的估计和解混矩阵的估计。按照所提出的方法,盲信号分离框架可被构建为一个非线性优化问题,其中成本函数有闭式表达式,并且只有解混矩阵的元素作为未知数出现。我们进行了一系列蒙特卡罗模拟,涉及具有不同统计特征和样本大小的各种源信号的线性混合。新算法不仅始终优于所有当前最先进的ICA方法,而且还展示了以下特性:1)只有一个能够学习源统计信息的灵活模型才能始终实现对所有混合信号的准确分离。2)采用适当设计的优化框架,有可能推导出一种与传统算法的稳定性和收敛特性相匹配的灵活ICA算法。3)非参数方法不一定需要大样本量才能优于具有固定或部分自适应对比函数的方法。