This licentiate thesis focuses on clustered parametric models for estimation of line spectra, when the spectral content of a signal source is assumed to exhibit some form of grouping. Different from previous parametric approaches, which generally require explicit knowledge of the model orders, this thesis exploits sparse modeling, where the orders are implicitly chosen. For line spectra, the non-linear parametric model is approximated by a linear system, containing an overcomplete basis of candidate frequencies, called a dictionary, and a large set of linear response variables that selects and weights the components in the dictionary. Frequency estimates are obtained by solving a convex optimization program, where the sum of squared residua...
One important class of problems within spectral estimation is when the signal can be well represente...
In this paper, the problem of speech source localization and separation from recordings of convoluti...
This paper establishes a nearly optimal algorithm for estimating the frequencies and am-plitudes of ...
This doctorate thesis focuses on sparse regression, a statistical modeling tool for selecting valuab...
This thesis examines sparse statistical modeling on a range of applications in audio modeling, audio...
This thesis is based on nine papers, all concerned with parameter estimation. The thesis aims at sol...
This thesis considers sparse modeling and estimation of multi-pitch signals, i.e., signals whose fre...
In this work, we consider the problem of multi-pitch estimation using sparse heuristics and convex m...
Spectrum analysis of speech signals is important for their detection, recognition, and separation. S...
This paper is concerned about sparse, continuous frequency estimation in line spectral estimation, a...
Abstract—This paper is concerned about sparse, continuous frequency estimation in line spectral esti...
This work treats the estimation of chroma features for harmonic audio signals using a sparse reconst...
Abstract—We address the problem of estimating spectral lines from irregularly sampled data within th...
A collaborative framework for detecting the different sources in mixed signals is presented in this ...
Abstract—We investigate a data-driven approach to the anal-ysis and transcription of polyphonic musi...
One important class of problems within spectral estimation is when the signal can be well represente...
In this paper, the problem of speech source localization and separation from recordings of convoluti...
This paper establishes a nearly optimal algorithm for estimating the frequencies and am-plitudes of ...
This doctorate thesis focuses on sparse regression, a statistical modeling tool for selecting valuab...
This thesis examines sparse statistical modeling on a range of applications in audio modeling, audio...
This thesis is based on nine papers, all concerned with parameter estimation. The thesis aims at sol...
This thesis considers sparse modeling and estimation of multi-pitch signals, i.e., signals whose fre...
In this work, we consider the problem of multi-pitch estimation using sparse heuristics and convex m...
Spectrum analysis of speech signals is important for their detection, recognition, and separation. S...
This paper is concerned about sparse, continuous frequency estimation in line spectral estimation, a...
Abstract—This paper is concerned about sparse, continuous frequency estimation in line spectral esti...
This work treats the estimation of chroma features for harmonic audio signals using a sparse reconst...
Abstract—We address the problem of estimating spectral lines from irregularly sampled data within th...
A collaborative framework for detecting the different sources in mixed signals is presented in this ...
Abstract—We investigate a data-driven approach to the anal-ysis and transcription of polyphonic musi...
One important class of problems within spectral estimation is when the signal can be well represente...
In this paper, the problem of speech source localization and separation from recordings of convoluti...
This paper establishes a nearly optimal algorithm for estimating the frequencies and am-plitudes of ...