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This paper presents a new approach using EM (Expectation-Maximization)
algorithms for ML (maximum likelihood) sequence estimation over unknown
ISI (inter-symbol interference) channels with linearly-constrained
random channel coefficients which may be fast time-varying.
By using the EM formulation to marginalize over the underlying channel
coefficient distribution, maximum-likelihood estimates of the transmitted
sequence are obtained. The EM algorithms are shown to perform better, in
terms of BER, than existing algorithms which perform jointly-optimal
sequence and channel estimation, or which do not take into account fast
time-varying channel effects.
Rick Perry
2000-03-16