In this paper, we describe a minimal mean square error (MMSE) optimal interpolation filter for discrete random signals. We explicitly derive the interpolation filter for a first-order autoregressive process (AR(1)), and show that the filter depends only on the two adjacent points. The result is extended by developing an algorithm called local AR approximation (LARA), where a random signal is locally estimated as an AR(1) process. Experimental evaluation illustrates that LARA interpolation yields a lower mean square error than other common interpolation techniques, including linear, spline and local polynomial approximation (LPA)
The main objective in this thesis is to design optimal samplers, downsamplers and interpolators (hol...
International audienceThis paper deals with the problem of adaptive reconstruction and identificatio...
International audienceThis paper deals with the problem of adaptive reconstruction and identificatio...
In this paper, we describe a minimal mean square error (MMSE) optimal interpolation filter for discr...
This paper presents an adaptive algorithm for the restoration of lost sample values in discrete-time...
This paper presents an adaptive algorithm for the restoration of lost sample values in discrete-time...
The authors present an adaptive algorithm for the restoration of lost sample values in discrete-time...
The authors present an adaptive algorithm for the restoration of lost sample values in discrete-time...
The authors present an adaptive algorithm for the restoration of lost sample values in discrete-time...
The authors present an adaptive algorithm for the restoration of lost sample values in discrete-time...
Abstract-This paper presents an adaptive algorithm for the resto-ration of lost sample values in dis...
Algorithms for the restoration of unknown samples at known positions embedded in a neighborhood of k...
Algorithms for the restoration of unknown samples at known positions embedded in a neighborhood of k...
This dissertation investigates sampling and reconstruction of wide sense stationary (WSS) random pro...
The generalized sampling theorem states that any analogue signal whose spectrum is limited to 1/T ca...
The main objective in this thesis is to design optimal samplers, downsamplers and interpolators (hol...
International audienceThis paper deals with the problem of adaptive reconstruction and identificatio...
International audienceThis paper deals with the problem of adaptive reconstruction and identificatio...
In this paper, we describe a minimal mean square error (MMSE) optimal interpolation filter for discr...
This paper presents an adaptive algorithm for the restoration of lost sample values in discrete-time...
This paper presents an adaptive algorithm for the restoration of lost sample values in discrete-time...
The authors present an adaptive algorithm for the restoration of lost sample values in discrete-time...
The authors present an adaptive algorithm for the restoration of lost sample values in discrete-time...
The authors present an adaptive algorithm for the restoration of lost sample values in discrete-time...
The authors present an adaptive algorithm for the restoration of lost sample values in discrete-time...
Abstract-This paper presents an adaptive algorithm for the resto-ration of lost sample values in dis...
Algorithms for the restoration of unknown samples at known positions embedded in a neighborhood of k...
Algorithms for the restoration of unknown samples at known positions embedded in a neighborhood of k...
This dissertation investigates sampling and reconstruction of wide sense stationary (WSS) random pro...
The generalized sampling theorem states that any analogue signal whose spectrum is limited to 1/T ca...
The main objective in this thesis is to design optimal samplers, downsamplers and interpolators (hol...
International audienceThis paper deals with the problem of adaptive reconstruction and identificatio...
International audienceThis paper deals with the problem of adaptive reconstruction and identificatio...