Adaptive Deconvolution and Cross Equalization
نویسندگان
چکیده
Adaptive filtering have been introduced by Widrow, which later led to the development of Neural Networks. I am taking a lot of liberties by borrowing many concepts introduced by Widrow for the purpose of reintroducing the concepts of adaptation into deconvolution. I recommend reading of the book by Widrow and Stearns for further understanding and proofs of the concepts discussed below. I have also studied the method presented by Griffiths et al (1977), which is somewhat similar to Widrow's approach and adaptation method used in the ProMax Adaptive Deconvolution modules.
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