TO IEEE TRANSACTIONS SIGNAL PROCESSING , MARCH 11 , 1999 1 Bayesian Blind Source
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چکیده
| This paper presents a Bayesian statistical framework for blind source separation that uniies other approaches such as Principal Components, Independent Components , and Factor Analysis. Further, Ia probabilistic method is developed to determine the number of sources to separate and the advantages over other methods are stated.
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تاریخ انتشار 1999