While signal estimation under random amplitudes, phase shifts, and additive noise is studied frequently, the problem of estimating a deterministic signal under ran-dom time-warpings has been relatively unexplored. We present a novel framework for estimating the unknown signal that utilizes the action of the warping group to form an equivalence relation between signals. First, we derive an estimator for the equivalence class of the unknown signal using the notion of Karcher mean on the quotient space of equivalence classes. This step requires the use of Fisher-Rao Riemannian metric and a square-root representation of signals to enable compu-tations of distances and means under this metric. Then, we define a notion of the center of a class an...
The problem of detecting the similarity between noisy signals obtained from electronic instrument me...
In the light of regularized dynamic time warping kernels, this paper re-considers the concept of a t...
Abstract. Non-stationary signal classification is a difficult and complex problem. On top of that, w...
Temporal alignment of human behaviour from visual data is a very challenging problem due to a numero...
The paper treats jitter estimation for alignment of a set of signals which contains several unknown ...
The goal of temporal alignment is to establish time correspondence between two sequences, which has ...
The problem of time-series retrieval arises in many fields of science and constitutes many important...
Two philosophically different approaches to the analysis of signals with imperfect cyclostationarity...
Signals that have undergone a non-homogeneous stretching or compression operation in time have recei...
We introduce an approach to compensate for temporal distortions of repeated measurements in event-re...
Abstract-Time warping finds use in many fields of time series analysis, and it has been effectively ...
International audienceThis paper proposes a parameters estimation algorithm for signals composed of ...
Thesis (Master's)--University of Washington, 2014A common assumption used in statistical signal proc...
International audienceAn approach to the spectral estimation for some classes of non-stationary rand...
Machine learning algorithms for the analysis of time-series often depend on the assumption that util...
The problem of detecting the similarity between noisy signals obtained from electronic instrument me...
In the light of regularized dynamic time warping kernels, this paper re-considers the concept of a t...
Abstract. Non-stationary signal classification is a difficult and complex problem. On top of that, w...
Temporal alignment of human behaviour from visual data is a very challenging problem due to a numero...
The paper treats jitter estimation for alignment of a set of signals which contains several unknown ...
The goal of temporal alignment is to establish time correspondence between two sequences, which has ...
The problem of time-series retrieval arises in many fields of science and constitutes many important...
Two philosophically different approaches to the analysis of signals with imperfect cyclostationarity...
Signals that have undergone a non-homogeneous stretching or compression operation in time have recei...
We introduce an approach to compensate for temporal distortions of repeated measurements in event-re...
Abstract-Time warping finds use in many fields of time series analysis, and it has been effectively ...
International audienceThis paper proposes a parameters estimation algorithm for signals composed of ...
Thesis (Master's)--University of Washington, 2014A common assumption used in statistical signal proc...
International audienceAn approach to the spectral estimation for some classes of non-stationary rand...
Machine learning algorithms for the analysis of time-series often depend on the assumption that util...
The problem of detecting the similarity between noisy signals obtained from electronic instrument me...
In the light of regularized dynamic time warping kernels, this paper re-considers the concept of a t...
Abstract. Non-stationary signal classification is a difficult and complex problem. On top of that, w...