Blind System Identi cation in an Impulsive Environment
نویسندگان
چکیده
1 A method is presented for blind system identii-cation in an impulsive environment, where the system output is described by a symmetric-stable(SS) law. The method employs either the phase or the magnitude of the recently proposed-Spectrum 1] of the system output. It is much simpler than the method proposed in 1] that also relies on the phase or magnitude of the-Spectrum, and provides the system cepstrum via closed form expressions.
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