System identification based on quantized observations requires either approximations of the quantization noise, leading to suboptimal algorithms, or dedicated algorithms tailored to the quantization noise properties. This contribution studies fundamental issues in estimation that relate directly to the core methods in system identification. As a first contribution, results from statistical quantization theory are surveyed and applied to both moment calculations (mean, variance etc) and the likelihood function of the measured signal. In particular, the role of adding dithering noise at the sensor is studied. The overall message is that tailored dithering noise can considerably simplify the derivation of optimal estimators. The price for this...
Quantization is a basic operation in communication, having a considerable impact also on control, in...
Optimal input design for system identification with quantized sensors is tackled in a worst-case set...
In this paper a system identification method is described for the case of measurement errors on inpu...
In this paper, we analyse the effect of the quantization of signals used for system identification a...
The implication of quantized sensor information on estimation and filtering problems is studied. The...
This book presents recently developed methodologies that utilize quantized information in system ide...
The Quantization Theorem I (QT I) implies that the likelihood function can be reconstructed from qua...
System identification is studied in which the system output is quantized, transmitted through a digi...
This brief presents characterizations of identification errors under a probabilistic framework when...
Abstract. Statistical description of quantization process is common in the theory of quantization. F...
This paper introduces several algorithms for signal estimation using binary-valued output sensing. T...
The problem of distributed parameter estimation from binary quantized observations is studied when t...
This paper studies the identification of ARMA systems with colored measurement noises using finite-l...
This paper addresses system identification of FIR models with quantized measurements in a worst-case...
AbstractThis paper studies the identification of ARMA systems with colored measurement noises using ...
Quantization is a basic operation in communication, having a considerable impact also on control, in...
Optimal input design for system identification with quantized sensors is tackled in a worst-case set...
In this paper a system identification method is described for the case of measurement errors on inpu...
In this paper, we analyse the effect of the quantization of signals used for system identification a...
The implication of quantized sensor information on estimation and filtering problems is studied. The...
This book presents recently developed methodologies that utilize quantized information in system ide...
The Quantization Theorem I (QT I) implies that the likelihood function can be reconstructed from qua...
System identification is studied in which the system output is quantized, transmitted through a digi...
This brief presents characterizations of identification errors under a probabilistic framework when...
Abstract. Statistical description of quantization process is common in the theory of quantization. F...
This paper introduces several algorithms for signal estimation using binary-valued output sensing. T...
The problem of distributed parameter estimation from binary quantized observations is studied when t...
This paper studies the identification of ARMA systems with colored measurement noises using finite-l...
This paper addresses system identification of FIR models with quantized measurements in a worst-case...
AbstractThis paper studies the identification of ARMA systems with colored measurement noises using ...
Quantization is a basic operation in communication, having a considerable impact also on control, in...
Optimal input design for system identification with quantized sensors is tackled in a worst-case set...
In this paper a system identification method is described for the case of measurement errors on inpu...