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Journal ArticleDOI

Bayesian algorithms for blind equalization using parallel adaptive filtering

TLDR
A new blind equalization algorithm based on a suboptimum Bayesian symbol-by-symbol detector is presented and it is shown that the maximum a posteriori (MAP) sequence probabilities can be approximated using the innovations likelihoods generated by a parallel bank of Kalman filters.
Abstract
A new blind equalization algorithm based on a suboptimum Bayesian symbol-by-symbol detector is presented. It is first shown that the maximum a posteriori (MAP) sequence probabilities can be approximated using the innovations likelihoods generated by a parallel bank of Kalman filters. These filters generate a set of channel estimates conditioned on the possible symbol subsequences contributing to the intersymbol interference. The conditional estimates and MAP symbol metrics are then combined using a suboptimum Bayesian formula. Two methods are considered to reduce the computational complexity of the algorithm. First, the technique of reduced-state sequence estimation is adopted to reduce the number of symbol subsequences considered in the channel estimation process and hence the number of parallel filters required. Second, it is shown that the Kalman filters can be replaced by simpler least-mean-square (LMS) adaptive filters. A computational complexity analysis of the LMS Bayesian equalizer demonstrates that its implementation in parallel programmable digital signal processing devices is feasible at 16 kbps. The performance of the resulting algorithms is evaluated through bit-error-rate simulations, which are compared to the performance bounds of the maximum-likelihood sequence estimator. It is shown that the Kalman filter and LMS-based algorithms achieve blind start-up and rapid convergence (typically within 200 iterations) for both BPSK and QPSK modulation formats. >

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Citations
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Journal ArticleDOI

Basis expansion models and diversity techniques for blind identification and equalization of time-varying channels

TL;DR: Novel algorithms are developed for blind identification, direct, zero-forcing equalization and minimum mean square error (MMSE) equalization by combining channel diversity with temporal (fractional sampling) and/or spatial diversity which becomes available with multiple receivers.
Journal ArticleDOI

Multichannel blind identification: from subspace to maximum likelihood methods

TL;DR: A review of blind channel estimation algorithms is presented, from the (second-order) moment-based methods to the maximum likelihood approaches, under both statistical and deterministic signal models.
Journal ArticleDOI

Nonlinear techniques for the joint estimation of cochannel signals

TL;DR: Novel joint estimators are proposed that employ a single-input demodulator with oversampling to compensate for timing uncertainties and a (suboptimal) two-stage joint MAP symbol detector (JMAPSD) is introduced that has a lower complexity than the single-stage estimators while accruing only a marginal loss in error-rate performance at high signal-to-interference ratios.
Journal ArticleDOI

Adaptive soft-input soft-output algorithms for iterative detection with parametric uncertainty

TL;DR: The exact expressions for the soft metrics in the presence of parametric uncertainty modeled as a Gauss-Markov process are derived in a novel way that enables the decoupling of complexity and observation length.
Journal ArticleDOI

Joint MAP equalization and channel estimation for frequency-selective and frequency-flat fast-fading channels

TL;DR: A new fractionally-spaced maximum a posteriori (MAP) equalizer for data transmission over frequency-selective fading channels and is presented in an iterative (turbo) receiver structure.
References
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Journal ArticleDOI

Maximum-likelihood sequence estimation of digital sequences in the presence of intersymbol interference

TL;DR: In this paper, a maximum likelihood sequence estimator for a digital pulse-amplitude-modulated sequence in the presence of finite intersymbol interference and white Gaussian noise is developed, which comprises a sampled linear filter, called a whitened matched filter, and a recursive nonlinear processor, called the Viterbi algorithm.
Journal ArticleDOI

Self-Recovering Equalization and Carrier Tracking in Two-Dimensional Data Communication Systems

TL;DR: This paper solves the general problem of adaptive channel equalization without resorting to a known training sequence or to conditions of limited distortion.
Journal ArticleDOI

A new approach to multipath correction of constant modulus signals

TL;DR: In this article, an adaptive digital filtering algorithm that can compensate for both frequency-selective multipath and interference on constant envelope modulated signals is presented, which exploits the fact that multipath reception and various interference sources generate incidental amplitude modulation on the received signal.
Journal ArticleDOI

A Method of Self-Recovering Equalization for Multilevel Amplitude-Modulation Systems

TL;DR: A self-recovering equalization algorithm, which is employed in multilevel amplitude-modulated data transmission, is presented and the convergence processes of the present self-reaching equalizer are shown by computer simulation.
Journal ArticleDOI

Reduced-state sequence estimation with set partitioning and decision feedback

TL;DR: A simple technique for quadrature partial-response signaling (QPRS) is described that eliminates the quasicatastrophic nature of the ML trellis and shows that a good performance/complexity tradeoff can be obtained.