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Explicit versus implicit source estimation for blind multiple input single output system identification

机译:显式与隐式源估计用于盲多输入单输出系统识别

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Sparsely-activated time series are found in many physical systems. In these cases, the signals can be approximated by convolution of sparse sources with a set of shift-invariant filters. When there is access to only one sensor, such that there is a single observation signal, identifying the source signals appears to be an ill-posed problem, but for very sparse sources it is still possible to learn the system. We discuss analysis techniques for sparsely activated signals, which retrieve sparse sources given the filters, and identify conditions when algorithms based on independent component analysis (ICA) and sparse coding can blindly estimate filters from a single noisy time-series. Many qualitative results have been made for learning shift-invariant bases on natural signals, but for a thorough understanding of the effect of sparsity, we quantitatively analyze results on synthetic examples, comparing how ICA and shift-invariant sparse coding approaches perform for multiple-source blind system identification.
机译:在许多物理系统中都发现了稀疏激活的时间序列。在这些情况下,可以通过将稀疏源与一组位移不变滤波器进行卷积来近似信号。当仅使用一个传感器(例如只有一个观察信号)时,识别源信号似乎是一个不适的问题,但是对于非常稀疏的源,仍然可以学习系统。我们讨论了稀疏激活信号的分析技术,该技术检索给定滤波器的稀疏源,并在基于独立成分分析(ICA)和稀疏编码的算法可以从单个噪声时间序列盲目估计滤波器时确定条件。在基于自然信号学习不变不变的基础上已经取得了许多定性结果,但是为了彻底了解稀疏性的影响,我们定量分析了合成示例的结果,比较了ICA和不变不变的稀疏编码方法对多源的表现如何盲系统识别。

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