In this paper, we propose a new class of techniques to identify periodicities in data. We target the period estimation directly rather than inferring the period from the signal’s spectrum. By doing so, we obtain several advantages over the traditional spectrum estimation techniques such as DFT and MUSIC. Apart from estimating the unknown period of a signal, we search for finer periodic structure within the given signal. For instance, it might be possible that the given periodic signal was actually a sum of signals with much smaller periods. For example, adding signals with periods 3, 7, and 11 can give rise to a period 231 signal. We propose methods to identify these “hidden periods” 3, 7, and 11. We first propose a new family of square mat...
Signal reconstruction from sampling data is an important problem in signal processing and system ide...
Detecting periodicity in a short sequence is an important problem, with many applications across sci...
Detecting periodicity in a short sequence is an important problem, with many applications across sci...
In this paper, we propose a new class of techniques to identify periodicities in data. We target the...
We propose several dictionary representations for periodic signals and use them for estimating their...
We propose several dictionary representations for periodic signals and use them for estimating their...
Recently, several high dimensional dictionary representations were proposed for discrete time period...
In this dissertation, we investigate periodicity estimation with nested periodic dictionaries (NPDs)...
In this dissertation, we investigate periodicity estimation with nested periodic dictionaries (NPDs)...
We propose a new filter-bank structure for the estimation and tracking of periodicities in time seri...
Can the MUSIC algorithm be used for period estimation? Prior works in this direction were based on m...
Several popular period estimation techniques use union-of-subspaces models to represent periodic sig...
A finite duration sequence exhibiting periodicities does not in general admit a sparse representatio...
A finite duration sequence exhibiting periodicities does not in general admit a sparse representatio...
Signal reconstruction from sampling data is an important problem in signal processing and system ide...
Signal reconstruction from sampling data is an important problem in signal processing and system ide...
Detecting periodicity in a short sequence is an important problem, with many applications across sci...
Detecting periodicity in a short sequence is an important problem, with many applications across sci...
In this paper, we propose a new class of techniques to identify periodicities in data. We target the...
We propose several dictionary representations for periodic signals and use them for estimating their...
We propose several dictionary representations for periodic signals and use them for estimating their...
Recently, several high dimensional dictionary representations were proposed for discrete time period...
In this dissertation, we investigate periodicity estimation with nested periodic dictionaries (NPDs)...
In this dissertation, we investigate periodicity estimation with nested periodic dictionaries (NPDs)...
We propose a new filter-bank structure for the estimation and tracking of periodicities in time seri...
Can the MUSIC algorithm be used for period estimation? Prior works in this direction were based on m...
Several popular period estimation techniques use union-of-subspaces models to represent periodic sig...
A finite duration sequence exhibiting periodicities does not in general admit a sparse representatio...
A finite duration sequence exhibiting periodicities does not in general admit a sparse representatio...
Signal reconstruction from sampling data is an important problem in signal processing and system ide...
Signal reconstruction from sampling data is an important problem in signal processing and system ide...
Detecting periodicity in a short sequence is an important problem, with many applications across sci...
Detecting periodicity in a short sequence is an important problem, with many applications across sci...