Generalized correlation function: definition, properties, and application to blind equalization 论文

2006IEEE Transactions on Signal Processing引用 445
Blind Source Separation TechniquesNeural Networks and ApplicationsChaos control and synchronization

摘要

With an abundance of tools based on kernel methods and information theoretic learning, a void still exists in incorporating both the time structure and the statistical distribution of the time series in the same functional measure. In this paper, a new generalized correlation measure is developed that includes the information of both the distribution and that of the time structure of a stochastic process. It is shown how this measure can be interpreted from a kernel method as well as from an information theoretic learning points of view, demonstrating some relevant properties. To underscore the effectiveness of the new measure, a simple blind equalization problem is considered using a coded signal.