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Featured researches published by Ernst Warsitz.


IEEE Transactions on Audio, Speech, and Language Processing | 2007

Blind Acoustic Beamforming Based on Generalized Eigenvalue Decomposition

Ernst Warsitz; M. R. Haeb-Umbach

Maximizing the output signal-to-noise ratio (SNR) of a sensor array in the presence of spatially colored noise leads to a generalized eigenvalue problem. While this approach has extensively been employed in narrowband (antenna) array beamforming, it is typically not used for broadband (microphone) array beamforming due to the uncontrolled amount of speech distortion introduced by a narrowband SNR criterion. In this paper, we show how the distortion of the desired signal can be controlled by a single-channel post-filter, resulting in a performance comparable to the generalized minimum variance distortionless response beamformer, where arbitrary transfer functions relate the source and the microphones. Results are given both for directional and diffuse noise. A novel gradient ascent adaptation algorithm is presented, and its good convergence properties are experimentally revealed by comparison with alternatives from the literature. A key feature of the proposed beamformer is that it operates blindly, i.e., it neither requires knowledge about the array geometry nor an explicit estimation of the transfer functions from source to sensors or the direction-of-arrival.


IEEE Transactions on Audio, Speech, and Language Processing | 2011

Speech Enhancement With a GSC-Like Structure Employing Eigenvector-Based Transfer Function Ratios Estimation

Alexander Krueger; Ernst Warsitz

In this paper, we present a novel blocking matrix and fixed beamformer design for a generalized sidelobe canceler for speech enhancement in a reverberant enclosure. They are based on a new method for estimating the acoustical transfer function ratios in the presence of stationary noise. The estimation method relies on solving a generalized eigenvalue problem in each frequency bin. An adaptive eigenvector tracking utilizing the power iteration method is employed and shown to achieve a high convergence speed. Simulation results demonstrate that the proposed beamformer leads to better noise and interference reduction and reduced speech distortions compared to other blocking matrix designs from the literature.


international conference on acoustics, speech, and signal processing | 2008

Speech enhancement with a new generalized eigenvector blocking matrix for application in a generalized sidelobe canceller

Ernst Warsitz; Alexander Krueger

The generalized sidelobe canceller by Griffith and Jim is a robust beamforming method to enhance a desired (speech) signal in the presence of stationary noise. Its performance depends to a high degree on the construction of the blocking matrix which produces noise reference signals for the subsequent adaptive interference canceller. Especially in reverberated environments the beamformer may suffer from signal leakage and reduced noise suppression. In this paper a new blocking matrix is proposed. It is based on a generalized eigenvalue problem whose solution provides an indirect estimation of the transfer functions from the source to the sensors. The quality of the new generalized eigenvector blocking matrix is studied in simulated rooms with different reverberation times and is compared to alternatives proposed in the literature.


international conference on acoustics, speech, and signal processing | 2005

Acoustic filter-and-sum beamforming by adaptive principal component analysis

Ernst Warsitz

For human-machine interfaces in distant-talking environments multichannel signal processing is often employed to obtain an enhanced signal for subsequent processing. In this paper we propose a novel adaptation algorithm for a filter-and-sum beamformer to adjust the coefficients of FIR filters to changing acoustic room impulses, e.g. due to speaker movement. A deterministic and a stochastic gradient ascent algorithm are derived from a constrained optimization problem, which iteratively estimates the eigenvector corresponding to the largest eigenvalue of the cross power spectral density of the microphone signals. The method does not require an explicit estimation of the speaker location. The experimental results show fast adaptation and excellent robustness of the proposed algorithm.


multimedia signal processing | 2004

Robust speaker direction estimation with particle filtering

Ernst Warsitz

The paper is concerned with binaural signal processing for a bimodal human-robot interface with hearing and vision. The two microphone signals are processed to obtain an enhanced single-channel input signal for the subsequent speech recognizer and to localize the acoustic source, an important information for establishing a natural human-robot communication. We utilize a robust adaptive algorithm for filter-and-sum beamforming (FSB) and extract speaker direction information from the resulting FIR filter coefficients. Further, particle filtering is applied which conducts a nonlinear Bayesian tracking of speaker movement. Good location accuracy can be achieved even in highly reverberant environments. The results obtained outperform the conventional generalized cross correlation (GCC) method.


microwaves radar and remote sensing symposium | 2017

Detection of moving targets in automotive radar with distorted ego-velocity information

Christopher Grimm; Ridha Farhoud; Tai Fei; Ernst Warsitz

In this paper we present an algorithm for the detection of moving targets in sight of an automotive radar sensor which can handle distorted ego-velocity information. In situations where biased or none velocity information is provided from the ego-vehicle, the algorithm is able to estimate the ego-velocity based on previously detected stationary targets with high accuracy, subsequently used for the target classification. Compared to existing ego-velocity algorithms our approach provides fast and efficient inference without sacrificing the practical classification accuracy. Other than that the algorithm is characterized by simple parameterization and little but appropriate model assumptions for high accurate production automotive radar sensors.


conference of the international speech communication association | 2004

Adaptive Beamforming Combined with Particle Filtering for Acoustic Source Localization

Sven Peschke; Ernst Warsitz


Archive | 2009

Method for determining distance and relative speed of remote object from observing point, involves transmitting signals synchronous to other signals, where each of former signals is differentiated from latter signals by frequency offset

Andreas Dr. Becker; Ernst Warsitz


International Workshop on Acoustic Echo and Noise Control (IWAENC 2006) | 2006

CONTROLLING SPEECH DISTORTION IN ADAPTIVE FREQUENCY-DOMA IN PRINCIPAL EIGENVECTOR BEAMFORMING

Ernst Warsitz


International Workshop on Acoustic Echo and Noise Control (IWAENC 2005) | 2005

Adaptive Filter-and-Sum Beamforming in Spatially Correlated Noise

Ernst Warsitz

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