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Dive into the research topics where Mohammad Niknazar is active.

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Featured researches published by Mohammad Niknazar.


IEEE Transactions on Biomedical Engineering | 2013

Fetal ECG Extraction by Extended State Kalman Filtering Based on Single-Channel Recordings

Mohammad Niknazar; Bertrand Rivet; Christian Jutten

In this paper, we present an extended nonlinear Bayesian filtering framework for extracting electrocardiograms (ECGs) from a single channel as encountered in the fetal ECG extraction from abdominal sensor. The recorded signals are modeled as the summation of several ECGs. Each of them is described by a nonlinear dynamic model, previously presented for the generation of a highly realistic synthetic ECG. Consequently, each ECG has a corresponding term in this model and can thus be efficiently discriminated even if the waves overlap in time. The parameter sensitivity analysis for different values of noise level, amplitude, and heart rate ratios between fetal and maternal ECGs shows its effectiveness for a large set of values of these parameters. This framework is also validated on the extractions of fetal ECG from actual abdominal recordings, as well as of actual twin magnetocardiograms.


Australasian Physical & Engineering Sciences in Medicine | 2015

Robust fetal QRS detection from noninvasive abdominal electrocardiogram based on channel selection and simultaneous multichannel processing

Ali Ghaffari; Mohammad Javad Mollakazemi; Seyyed Abbas Atyabi; Mohammad Niknazar

The purpose of this study is to provide a new method for detecting fetal QRS complexes from non-invasive fetal electrocardiogram (fECG) signal. Despite most of the current fECG processing methods which are based on separation of fECG from maternal ECG (mECG), in this study, fetal heart rate (FHR) can be extracted with high accuracy without separation of fECG from mECG. Furthermore, in this new approach thoracic channels are not necessary. These two aspects have reduced the required computational operations. Consequently, the proposed approach can be efficiently applied to different real-time healthcare and medical devices. In this work, a new method is presented for selecting the best channel which carries strongest fECG. Each channel is scored based on two criteria of noise distribution and good fetal heartbeat visibility. Another important aspect of this study is the simultaneous and combinatorial use of available fECG channels via the priority given by their scores. A combination of geometric features and wavelet-based techniques was adopted to extract FHR. Based on fetal geometric features, fECG signals were divided into three categories, and different strategies were employed to analyze each category. The method was validated using three datasets including Noninvasive fetal ECG database, DaISy and PhysioNet/Computing in Cardiology Challenge 2013. Finally, the obtained results were compared with other studies. The adopted strategies such as multi-resolution analysis, not separating fECG and mECG, intelligent channels scoring and using them simultaneously are the factors that caused the promising performance of the method.


international conference of the ieee engineering in medicine and biology society | 2014

Modeling quasi-periodic signals by a non-parametric model: Application on fetal ECG extraction

Saman Noorzadeh; Mohammad Niknazar; Bertrand Rivet; Julie Fontecave-Jallon; Pierre-Yves Gumery; Christian Jutten

Quasi-periodic signals can be modeled by their second order statistics as Gaussian process. This work presents a non-parametric method to model such signals. ECG, as a quasi-periodic signal, can also be modeled by such method which can help to extract the fetal ECG from the maternal ECG signal, using a single source abdominal channel. The prior information on the signal shape, and on the maternal and fetal RR interval, helps to better estimate the parameters while applying the Bayesian principles. The values of the parameters of the method, among which the R-peak instants, are accurately estimated using the Metropolis-Hastings algorithm. This estimation provides very precise values for the R-peaks, so that they can be located even between the existing time samples.


international conference on latent variable analysis and signal separation | 2012

Nonparametric modelling of ECG: applications to denoising and to single sensor fetal ECG extraction

Bertrand Rivet; Mohammad Niknazar; Christian Jutten

In this work, we tackle the problem of fetal electrocardiogram (ECG) extraction from a single sensor. The proposed method is based on non-parametric modelling of the ECG signal described thanks to its second order statistics. Each assumed source in the mixture is thus modelled as a second order process thanks to its covariance function. This modelling allows to reconstruct each source by maximizing the related posterior distribution. The proposed method is tested on synthetic data to evaluate its performance behavior to denoise ECG. It is then applied on real data to extract fetal ECG from a single maternal abdominal sensor.


Signal Processing | 2014

Blind source separation of underdetermined mixtures of event-related sources

Mohammad Niknazar; Hanna Becker; Bertrand Rivet; Christian Jutten; Pierre Comon


computing in cardiology conference | 2013

Fetal electrocardiogram R-peak detection using robust tensor decomposition and extended Kalman filtering

Mahsa Akhbari; Mohammad Niknazar; Christian Jutten; Mohammad Bagher Shamsollahi; Bertrand Rivet


computing in cardiology conference | 2013

A robust framework for noninvasive extraction of fetal electrocardiogram signals

Marzieh Fatemi; Mohammad Niknazar; Reza Sameni


european signal processing conference | 2012

Fetal ECG extraction from a single sensor by a non-parametric modeling

Mohammad Niknazar; Bertrand Rivet; Christian Jutten


Computing in Cardiology | 2013

PhysioNet/CinC challenge 2013: A novel noninvasive technique to recognize fetal QRS complexes from noninvasive fetal electrocardiogram signals

Ali Ghaffari; SeyyedAbbas Atyabi; Mohammad Javad Mollakazemi; Mohammad Niknazar; Maryam Niknami; Ali Soleimani


computing in cardiology conference | 2013

Fetal QRS complex detection based on three-way tensor decomposition

Mohammad Niknazar; Bertrand Rivet; Christian Jutten

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Bertrand Rivet

Centre national de la recherche scientifique

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Christian Jutten

Institut Universitaire de France

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Christian Jutten

Institut Universitaire de France

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Pierre Comon

Centre national de la recherche scientifique

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Julie Fontecave-Jallon

Centre national de la recherche scientifique

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