Problem statement: Speech segmentation is an important part for speech recognition, synthesizing and coding. Statistical based approach detects segmentation points via computing spectral distortion of the signal without prior knowledge of the acoustic information proved to be able to give good match, less omission but lot of insertion. These insertion points dropped segmentation accuracy. Approach: This study proposed a fusion method between statistical and connectionist approaches namely the divergence algorithm and Multi Layer Perceptron (MLP) with adaptive learning for segmentation of Malay connected digit with the aim to improve statistical approach via detection of insertion points. The neural network was optimized via trial and error ...
The Segmental Neural Network (SNN) architecture was introduced at BBN by Zavaliagkos et al. for resc...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...
We explore new methods of determining automatically derived units for classification of speech into ...
This study present segmentation of syllables in Malay connected digit speech. Segmentation was done ...
This study present segmentation of syllables in Malay connected digit speech. Segmentation was done ...
The automatic speech recognition (ASR) field has become one of the leading speech technology areas t...
Some connectionist models of speech segmentation have exploited the utterance boundary strategy, whe...
Some connectionist models of speech segmentation have exploited the utterance boundary strategy, whe...
Abstract: Artificial Neural Networks (ANNs) are widely and successfully used in speech recognition, ...
In this paper, we present some recent improvements in our automatic speech segmentation system, whic...
In this paper, we describe important improvements that were recently introduced in our Discriminativ...
The thesis of the proposed research is that connectionist networks are adequate models for the probl...
Streaming recognition and segmentation of multi-party conversations with overlapping speech is cruci...
This paper studies the segmentation and clustering of speaker speech. In order to improve the accura...
The paper compares a newly proposed hybrid connectionist-SCHMM approach [Hutter and Pfister 1994] wi...
The Segmental Neural Network (SNN) architecture was introduced at BBN by Zavaliagkos et al. for resc...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...
We explore new methods of determining automatically derived units for classification of speech into ...
This study present segmentation of syllables in Malay connected digit speech. Segmentation was done ...
This study present segmentation of syllables in Malay connected digit speech. Segmentation was done ...
The automatic speech recognition (ASR) field has become one of the leading speech technology areas t...
Some connectionist models of speech segmentation have exploited the utterance boundary strategy, whe...
Some connectionist models of speech segmentation have exploited the utterance boundary strategy, whe...
Abstract: Artificial Neural Networks (ANNs) are widely and successfully used in speech recognition, ...
In this paper, we present some recent improvements in our automatic speech segmentation system, whic...
In this paper, we describe important improvements that were recently introduced in our Discriminativ...
The thesis of the proposed research is that connectionist networks are adequate models for the probl...
Streaming recognition and segmentation of multi-party conversations with overlapping speech is cruci...
This paper studies the segmentation and clustering of speaker speech. In order to improve the accura...
The paper compares a newly proposed hybrid connectionist-SCHMM approach [Hutter and Pfister 1994] wi...
The Segmental Neural Network (SNN) architecture was introduced at BBN by Zavaliagkos et al. for resc...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...
We explore new methods of determining automatically derived units for classification of speech into ...