Fast adaptation of deep neural network based on discriminant codes for speech recognition
Fast adaptation of deep neural networks (DNN) is an important research topic in deep
learning. In this paper, we have proposed a general adaptation scheme for DNN based on …
learning. In this paper, we have proposed a general adaptation scheme for DNN based on …
Using neural network front-ends on far field multiple microphones based speech recognition
This paper presents an investigation of far field speech recognition using beamforming and
channel concatenation in the context of Deep Neural Network (DNN) based feature …
channel concatenation in the context of Deep Neural Network (DNN) based feature …
Integrating Gaussian mixtures into deep neural networks: Softmax layer with hidden variables
In the hybrid approach, neural network output directly serves as hidden Markov model
(HMM) state posterior probability estimates. In contrast to this, in the tandem approach …
(HMM) state posterior probability estimates. In contrast to this, in the tandem approach …
An auditory inspired amplitude modulation filter bank for robust feature extraction in automatic speech recognition
The human ability to classify acoustic sounds is still unmatched compared to recent methods
in machine learning. Psychoacoustic and physiological studies indicate that the auditory …
in machine learning. Psychoacoustic and physiological studies indicate that the auditory …
Speaker adaptation of hybrid NN/HMM model for speech recognition based on singular value decomposition
S Xue, H Jiang, L Dai, Q Liu - Journal of Signal Processing Systems, 2016 - Springer
Recently several speaker adaptation methods have been proposed for deep neural network
(DNN) in many large vocabulary continuous speech recognition (LVCSR) tasks. However …
(DNN) in many large vocabulary continuous speech recognition (LVCSR) tasks. However …
Multilingual MRASTA features for low-resource keyword search and speech recognition systems
This paper investigates the application of hierarchical MRASTA bottleneck (BN) features for
under-resourced languages within the IARPA Babel project. Through multilingual training of …
under-resourced languages within the IARPA Babel project. Through multilingual training of …
Speaker adaptive joint training of gaussian mixture models and bottleneck features
In the tandem approach, the output of a neural network (NN) serves as input features to a
Gaussian mixture model (GMM) aiming to improve the emission probability estimates. As …
Gaussian mixture model (GMM) aiming to improve the emission probability estimates. As …
[PDF][PDF] Multilingual hierarchical MRASTA features for ASR.
Abstract Recently, a multilingual Multi Layer Perceptron (MLP) training method was
introduced without having to explicitly map the phonetic units of multiple languages to a …
introduced without having to explicitly map the phonetic units of multiple languages to a …
[PDF][PDF] Multilingual features based keyword search for very low-resource languages.
In this paper we describe RWTH Aachen's system for keyword search (KWS) with very
limited amount of transcribed audio data available in the target language. This setting has …
limited amount of transcribed audio data available in the target language. This setting has …
[PDF][PDF] Should deep neural nets have ears? the role of auditory features in deep learning approaches.
Features inspired by the auditory system have previously demonstrated improvement in
automatic speech recognition (ASR). Similarly, the use of Deep Neural Networks (DNN) was …
automatic speech recognition (ASR). Similarly, the use of Deep Neural Networks (DNN) was …