52 research outputs found
OMP-type Algorithm with Structured Sparsity Patterns for Multipath Radar Signals
A transmitted, unknown radar signal is observed at the receiver through more
than one path in additive noise. The aim is to recover the waveform of the
intercepted signal and to simultaneously estimate the direction of arrival
(DOA). We propose an approach exploiting the parsimonious time-frequency
representation of the signal by applying a new OMP-type algorithm for
structured sparsity patterns. An important issue is the scalability of the
proposed algorithm since high-dimensional models shall be used for radar
signals. Monte-Carlo simulations for modulated signals illustrate the good
performance of the method even for low signal-to-noise ratios and a gain of 20
dB for the DOA estimation compared to some elementary method
Variational Latent Discrete Representation for Time Series Modelling
Discrete latent space models have recently achieved performance on par with
their continuous counterparts in deep variational inference. While they still
face various implementation challenges, these models offer the opportunity for
a better interpretation of latent spaces, as well as a more direct
representation of naturally discrete phenomena. Most recent approaches propose
to train separately very high-dimensional prior models on the discrete latent
data which is a challenging task on its own. In this paper, we introduce a
latent data model where the discrete state is a Markov chain, which allows fast
end-to-end training. The performance of our generative model is assessed on a
building management dataset and on the publicly available Electricity
Transformer Dataset
A Subband Hybrid Beamforming for In-car Speech Enhancement
Publication in the conference proceedings of EUSIPCO, Bucharest, Romania, 201
A new quantization optimization algorithm for the MPEG advanced audio coder using a statistical sub-band model of the quantization noise
International audienceIn this paper, an improvement of the quantization optimization algorithm for the MPEG Advanced Audio Coder (AAC) is presented. This algorithm, given a bit-rate constraint, minimizes the perceived distortion generated by the signal compression. The distortion can be related to the quantization error level over frequency sub-bands through an auditory model. Thus, optimizing the quantification requires knowledge of the rate-distortion function for each sub-band. When this function can be modeled in a simple way, the algorithm can take a one-loop recursive structure. However, in the MPEG AAC, the rate-distortion function is hard to characterize, since AAC makes use of non-linear quantizers and variable length entropy coders. As a result, the standard algorithm makes use of two nested loops with a local decoder, in order to measure the error level rather than predicting its value. We first describe a partial sub-band modeling of the rate-distortion function of interest in the MPEG AAC. Then, using a statistical approach, we find a relationship between the error level and the so-called quantization ``scale-factor'' and propose a new algorithm that is basically similar to a classical one loop ``bit allocation'' process. Finally, we describe the complete algorithm and show that it is more efficient than the standard one
Optimisation de la quantification par modèles statistiques dans le MPEG advanced audio coder (AAC) (application à la spatialisation d'un signal comprimé en environnement MPEG-4)
PARIS-Télécom ParisTech (751132302) / SudocSudocFranceF
Digital signal and image processing using MATLAB
This title provides the most important theoretical aspects of Image and Signal Processing (ISP) for both deterministic and random signals. The theory is supported by exercises and computer simulations relating to real applications.More than 200 programs and functions are provided in the MATLAB® language, with useful comments and guidance, to enable numerical experiments to be carried out, thus allowing readers to develop a deeper understanding of both the theoretical and practical aspects of this subject
Digital signal and image processing using MATLAB
This fully revised and updated second edition presents the most important theoretical aspects of Image and Signal Processing (ISP) for both deterministic and random signals. The theory is supported by exercises and computer simulations relating to real applications. More than 200 programs and functions are provided in the MATLABĂ’ language, with useful comments and guidance, to enable numerical experiments to be carried out, thus allowing readers to develop a deeper understanding of both the theoretical and practical aspects of this subject. This fully revised new edition updates : - th
Digital Signal and Image Processing using MATLAB, Volume 1
This fully revised and updated second edition presents the most important theoretical aspects of Image and Signal Processing (ISP) for both deterministic and random signals. The theory is supported by exercises and computer simulations relating to real applications.
More than 200 programs and functions are provided in the MATLABĂ’ language, with useful comments and guidance, to enable numerical experiments to be carried out, thus allowing readers to develop a deeper understanding of both the theoretical and practical aspects of this subject.
This fully revised new edition updates :
- the introduction to MATLAB programs and functions as well as the Graphically displaying results for 2D displays
- Calibration fundamentals for Discrete Time Signals and Sampling in Deterministic signals
- image processing by modifying the contrast
- also added are examples and exercises
- …