One of the great today's challenges in speech recognition is to ensure the robustness of the used speech representation. Usually, the recognition rate is strongly reduced when the speech is corrupted, e.g. by convolutional or additive noise, and the speech features are not designed to be robust. In this paper we study the effect of additive noise on the logarithmic filter-bank energy representation. We use time and frequency filtering techniques to emphasize the discriminative information and to reduce the mismatch between noisy and clean speech representation. A 2-D spectral representation is introduced to see the regions most affected by noise in the 2-D quefrency-modulation frequency domain and to help to design the frequency and time fi...
In this paper, we investigate the performance of modulation related features and normalized spectral...
This thesis examines techniques to improve the robustness of automatic speech recogni-tion (ASR) sys...
One of the biggest obstacles that hinder the widespread use of automatic speech recognition technolo...
One of the great today's challenges in speech recognition is to ensure the robustness of the used sp...
very speech recognition system requires a signal representation that parametrically models the tempo...
[[abstract]]Data-driven temporal filtering approaches based on a specific optimization technique hav...
In automatic speech recognition, the signal is usually represented by a set of time sequences of spe...
This work addresses two related questions. The first question is what joint time-frequency energy ...
In current speech recognition systems, speech is represented by a 2-D sequence of parameters that mo...
All speech recognition systems require some form of signal representation that parametrically models...
In this paper, we analyze the temporal modulation char-acteristics of speech and noise from a speech...
This thesis examines techniques to improve the robustness of automatic speech recognition (ASR) syst...
[[abstract]]This thesis considered robust speech recognition in various noise environments, with a s...
The time sequences of speech parameters resulting from current short-time spectral estimators show a...
The spectral parameters that result from filtering the frequency sequence of log mel-scaled filter-b...
In this paper, we investigate the performance of modulation related features and normalized spectral...
This thesis examines techniques to improve the robustness of automatic speech recogni-tion (ASR) sys...
One of the biggest obstacles that hinder the widespread use of automatic speech recognition technolo...
One of the great today's challenges in speech recognition is to ensure the robustness of the used sp...
very speech recognition system requires a signal representation that parametrically models the tempo...
[[abstract]]Data-driven temporal filtering approaches based on a specific optimization technique hav...
In automatic speech recognition, the signal is usually represented by a set of time sequences of spe...
This work addresses two related questions. The first question is what joint time-frequency energy ...
In current speech recognition systems, speech is represented by a 2-D sequence of parameters that mo...
All speech recognition systems require some form of signal representation that parametrically models...
In this paper, we analyze the temporal modulation char-acteristics of speech and noise from a speech...
This thesis examines techniques to improve the robustness of automatic speech recognition (ASR) syst...
[[abstract]]This thesis considered robust speech recognition in various noise environments, with a s...
The time sequences of speech parameters resulting from current short-time spectral estimators show a...
The spectral parameters that result from filtering the frequency sequence of log mel-scaled filter-b...
In this paper, we investigate the performance of modulation related features and normalized spectral...
This thesis examines techniques to improve the robustness of automatic speech recogni-tion (ASR) sys...
One of the biggest obstacles that hinder the widespread use of automatic speech recognition technolo...