Separation of non - stationary natural signals
نویسندگان
چکیده
Most approaches to the problem of source separation use the assumption of statistical independence. To capture statistical independence higher order statistics are required. In this chapter we will demonstrate how higher order criteria, such as maximum kurtosis, arise naturally from the property of non-stationarity. We will also show that source separation of non-stationary signals can be based entirely on second order statistics of the signals. Natural signals, be it images or time sequences, are for the most part non-stationary. For natural signals therefore we argue that non-stationarity is the fundamental property, from which speci c second or higher order separation criteria can be derived. We contrast the linear bases obtained using second order non-stationarity and ICA for the cases of natural images and speech powers. Based on these results we argue that speech powers can in fact be understood as a linear superposition of non-stationary spectro-temporal independent components, while this is not so evident for a spatial basis of images intensities. Finally we demonstrate the practical utility of the second order non-stationarity concept with a separation algorithm for the problem of convolutive source separation. We show its e ectiveness on acoustic mixtures in real reverberant environments. 1.1 Second and higher order separation criteria in the context of non-stationary signals Most approaches to source separation have been based on the condition of statistical independence of the constituent signals. Conventionally, higher order statistics are required to capture statistical independence.
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