International audienceIn this paper, we present an online identification method to the problem of parameter estimation from binary observations. A recursive identification algorithm with low-storage requirements and computational complexity is derived. We prove the convergence of this method provided that the input signal satisfies a strong mixing property. Some simulation results are then given in order to illustrate the properties of this method under various scenarios. This method is appealing in the context of micro-electronic devices since it only requires a 1-bit analog-to-digital converter, with low power consumption and minimal silicon area
International audienceThe work presented in this paper focuses on the recursive identification of fi...
Abstract — We investigate the problem of estimating a con-stant based on noisy observations via a bi...
International audienceIn this paper, we investigate the quality of a weighted leastsquare (WLS) para...
International audienceIn this paper, we present an online identification method to the problem of pa...
International audienceThe convergence analysis of an online system identification method based on bi...
An online approach to parameter estimation problems based on binary observations is presented in thi...
An online approach to nonlinear system identification based on binary observations is presented in t...
International audienceAn online approach to system identification based on the least-mean squares (L...
Abstract — An online approach to parameter estimation prob-lems based on binary observations is pres...
In this paper, we present a new weighted least-squares (WLS) approach for parameter estimation based...
This paper introduces several algorithms for signal estimation using binary-valued output sensing. T...
We present a new approach to parameter estimation problems based on binary measurements, motivated b...
Recovering the digital input of a time-discrete linear system from its (noisy) output is a significa...
International audienceThe work presented in this paper focuses on the recursive identification of fi...
Abstract — We investigate the problem of estimating a con-stant based on noisy observations via a bi...
International audienceIn this paper, we investigate the quality of a weighted leastsquare (WLS) para...
International audienceIn this paper, we present an online identification method to the problem of pa...
International audienceThe convergence analysis of an online system identification method based on bi...
An online approach to parameter estimation problems based on binary observations is presented in thi...
An online approach to nonlinear system identification based on binary observations is presented in t...
International audienceAn online approach to system identification based on the least-mean squares (L...
Abstract — An online approach to parameter estimation prob-lems based on binary observations is pres...
In this paper, we present a new weighted least-squares (WLS) approach for parameter estimation based...
This paper introduces several algorithms for signal estimation using binary-valued output sensing. T...
We present a new approach to parameter estimation problems based on binary measurements, motivated b...
Recovering the digital input of a time-discrete linear system from its (noisy) output is a significa...
International audienceThe work presented in this paper focuses on the recursive identification of fi...
Abstract — We investigate the problem of estimating a con-stant based on noisy observations via a bi...
International audienceIn this paper, we investigate the quality of a weighted leastsquare (WLS) para...