Subtractive dither is a powerful method for removing the signal dependence of quantization noise for coarsely quantized signals. However, estimation from dithered measurements often naively applies the sample mean or midrange, even when the total noise is not well described with a Gaussian or uniform distribution. We show that the generalized Gaussian distribution approximately describes subtractively dithered, quantized samples of a Gaussian signal. Furthermore, a generalized Gaussian fit leads to simple estimators based on order statistics that match the performance of more complicated maximum likelihood estimators requiring iterative solvers. The order statistics-based estimators outperform both the sample mean and midrange for nontrivia...
Abstract—The Bayesian parameter estimation problem using a single-bit dithered quantizer is consider...
We consider encoding of a source with a pre-specified second order statistics, but otherwise arbitra...
The parameters of non-uniform and uniform quantizers up to ten bits of quantization, optimum for a G...
Statistical description of quantization process is common in the theory of quantization. For the cas...
The Quantization Theorem I (QT I) implies that the likelihood function can be reconstructed from qua...
System identification based on quantized observations requires either approximations of the quantiza...
Dithered quantization and noise shaping is well known in the audio community. The image processing ...
Quantization is a basic operation in communication, having a considerable impact also on control, in...
This paper studies the capacity of the peak-and-average-power-limited Gaussian channel when its outp...
International audienceUsing high-rate theory approximations we introduce flexible practical quantize...
We have shown in Chap. 3 that zeroth and first-order noise-shaping TDCs can be modelled by quantizer...
Abstract—Randomized (dithered) quantization is a method ca-pable of achieving white reconstruction e...
Compared with data with high precision, one-bit (binary) data are preferable in many applications be...
Abstract—We analyze the behaviour of the mean squared error (MSE) achievable by oversampled, uniform...
Estimation of a vector from quantized linear measurements is a common problem for which simple linea...
Abstract—The Bayesian parameter estimation problem using a single-bit dithered quantizer is consider...
We consider encoding of a source with a pre-specified second order statistics, but otherwise arbitra...
The parameters of non-uniform and uniform quantizers up to ten bits of quantization, optimum for a G...
Statistical description of quantization process is common in the theory of quantization. For the cas...
The Quantization Theorem I (QT I) implies that the likelihood function can be reconstructed from qua...
System identification based on quantized observations requires either approximations of the quantiza...
Dithered quantization and noise shaping is well known in the audio community. The image processing ...
Quantization is a basic operation in communication, having a considerable impact also on control, in...
This paper studies the capacity of the peak-and-average-power-limited Gaussian channel when its outp...
International audienceUsing high-rate theory approximations we introduce flexible practical quantize...
We have shown in Chap. 3 that zeroth and first-order noise-shaping TDCs can be modelled by quantizer...
Abstract—Randomized (dithered) quantization is a method ca-pable of achieving white reconstruction e...
Compared with data with high precision, one-bit (binary) data are preferable in many applications be...
Abstract—We analyze the behaviour of the mean squared error (MSE) achievable by oversampled, uniform...
Estimation of a vector from quantized linear measurements is a common problem for which simple linea...
Abstract—The Bayesian parameter estimation problem using a single-bit dithered quantizer is consider...
We consider encoding of a source with a pre-specified second order statistics, but otherwise arbitra...
The parameters of non-uniform and uniform quantizers up to ten bits of quantization, optimum for a G...