Automatic Speech Recognition (ASR) systems usually fail when they encounter speech from far-field microphone in reverberant environments. This is due to the application of short-term feature extraction techniques which do not compensate for the artifacts introduced by long room impulse responses. In this paper, we propose a front-end, based on Frequency Domain Linear Prediction (FDLP), that tries to remove reverberation artifacts present in far-field speech. Long temporal segments of far-field speech are analyzed in narrow frequency sub-bands to extract FDLP envelopes and residual signals. Filtering the residual signals with gain normalized inverse FDLP filters result in a set of sub-band signals which are synthesized to reconstruct the sig...
Overview of Frequency-Domain Linear Prediction (FDLP) as a novel approach to speech recognition
Frequency domain linear prediction (FDLP) is a technique for auto-regressive (AR) modeling of Hilber...
Current speech recognition systems uniformly employ short-time spectral analysis, usually over windo...
Performance of a typical automatic speech recognition (ASR) system severely degrades when it encount...
Recognition of reverberant speech constitutes a challenging problem for typical speech recognition s...
The performance of a typical speaker verification system degrades significantly in reverberant envir...
Far-field microphone speech signals cause high error rates for automatic speech recognition systems,...
This paper proposes two methods for robust automatic speech recognition (ASR) in reverberant environ...
In this article the authors continue previous studies regarding the investigation of methods that ai...
This paper presents extended techniques aiming at the improvement of automatic speech recognition (A...
In poor room acoustics conditions, speech signals received by a microphone might become corrupted by...
This paper presents an investigation on speech recognition performance in reverberant envi-ronments....
The sub-band Frequency Domain Linear Prediction (FDLP) tech-nique estimates autoregressive models of...
Frequency Domain Linear Prediction (FDLP) provides an efficient way to represent temporal envelopes ...
In this paper, we present a spectro-temporal feature extraction technique using sub-band Hilbert env...
Overview of Frequency-Domain Linear Prediction (FDLP) as a novel approach to speech recognition
Frequency domain linear prediction (FDLP) is a technique for auto-regressive (AR) modeling of Hilber...
Current speech recognition systems uniformly employ short-time spectral analysis, usually over windo...
Performance of a typical automatic speech recognition (ASR) system severely degrades when it encount...
Recognition of reverberant speech constitutes a challenging problem for typical speech recognition s...
The performance of a typical speaker verification system degrades significantly in reverberant envir...
Far-field microphone speech signals cause high error rates for automatic speech recognition systems,...
This paper proposes two methods for robust automatic speech recognition (ASR) in reverberant environ...
In this article the authors continue previous studies regarding the investigation of methods that ai...
This paper presents extended techniques aiming at the improvement of automatic speech recognition (A...
In poor room acoustics conditions, speech signals received by a microphone might become corrupted by...
This paper presents an investigation on speech recognition performance in reverberant envi-ronments....
The sub-band Frequency Domain Linear Prediction (FDLP) tech-nique estimates autoregressive models of...
Frequency Domain Linear Prediction (FDLP) provides an efficient way to represent temporal envelopes ...
In this paper, we present a spectro-temporal feature extraction technique using sub-band Hilbert env...
Overview of Frequency-Domain Linear Prediction (FDLP) as a novel approach to speech recognition
Frequency domain linear prediction (FDLP) is a technique for auto-regressive (AR) modeling of Hilber...
Current speech recognition systems uniformly employ short-time spectral analysis, usually over windo...