MAP decomposition of a mixture of AR signal using multilayer perceptrons
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چکیده
منابع مشابه
Cs442 Project Report: Map Decomposition of a Mixture of Ar Signals Using Multilayer Perceptrons
We consider the problem of classifying multiple simultaneous autoregressive (AR) signals based upon the observation of their sum using a multilayer perceptron network (MLP). We propose a method that allows the training of the classiier to be performed on separate AR processes , and uses the Bayesian interpretation of the outputs of a MLP to obtain the maximum a posteriori probability decomposit...
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