This paper shows the existence of the optimal training, in terms of achievable mutual information rate, for an output feedback implicit estimator for finite-state Markov communication channels. A proper quantification of source redundancy information, implicitly used for channel estimation, is performed. This enables an optimal training rate to be determined as a tradeoff between input signal entropy rate reduction (source redundancy) and channel process entropy rate reduction (channel estimation). The maximal mutual information rate, assuming the optimal implicit training and the presence of channel noise, is shown to be strictly below the ergodic channel information capacity. It is also shown that this capacity penalty, caused by noisy ti...
Inspired by the ideas from the field of stochastic approximation, we propose a randomized algorithm ...
2013-02-19The fundamental trade-off between communication rate and estimation error in sensing the c...
We consider the problem of optimal allocation of resources between training and data for transmissio...
Abstract—We consider a class of finite-state Markov channels with feedback. We first introduce a sim...
We study the real-time estimation of a Markov process over a memoryless noisy digital communication ...
Abstract — We consider a real--time communication system with noisy feedback consisting of a Markov ...
In this paper, we introduce a general framework for treating channels with memory and feedback. Firs...
In the first part of this thesis, the information capacity of time-varying fading channels isanalyse...
The main concerns of this thesis are some special families of channels with memory, which are of gre...
2009 IEEE International Symposium on Information TheoryWe consider a finite-state memoryless channel...
We consider a finite-state memoryless channel with i.i.d. channel state and the input Markov process...
We consider the problem of minimizing upper bounds and maximizing lower bounds on information rates ...
Abstract — For a stationary additive Gaussian-noise channel with a rational noise power spectrum of ...
Abstract — We study the capacity of Markov channels with causal deterministic partial (quantized) st...
We study the effect of training method on the receiver bit error rate (BER) performance in constant ...
Inspired by the ideas from the field of stochastic approximation, we propose a randomized algorithm ...
2013-02-19The fundamental trade-off between communication rate and estimation error in sensing the c...
We consider the problem of optimal allocation of resources between training and data for transmissio...
Abstract—We consider a class of finite-state Markov channels with feedback. We first introduce a sim...
We study the real-time estimation of a Markov process over a memoryless noisy digital communication ...
Abstract — We consider a real--time communication system with noisy feedback consisting of a Markov ...
In this paper, we introduce a general framework for treating channels with memory and feedback. Firs...
In the first part of this thesis, the information capacity of time-varying fading channels isanalyse...
The main concerns of this thesis are some special families of channels with memory, which are of gre...
2009 IEEE International Symposium on Information TheoryWe consider a finite-state memoryless channel...
We consider a finite-state memoryless channel with i.i.d. channel state and the input Markov process...
We consider the problem of minimizing upper bounds and maximizing lower bounds on information rates ...
Abstract — For a stationary additive Gaussian-noise channel with a rational noise power spectrum of ...
Abstract — We study the capacity of Markov channels with causal deterministic partial (quantized) st...
We study the effect of training method on the receiver bit error rate (BER) performance in constant ...
Inspired by the ideas from the field of stochastic approximation, we propose a randomized algorithm ...
2013-02-19The fundamental trade-off between communication rate and estimation error in sensing the c...
We consider the problem of optimal allocation of resources between training and data for transmissio...