[PDF] Top 20 Features and Model Adaptation Techniques for Robust Speech Recognition: A Review
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Features and Model Adaptation Techniques for Robust Speech Recognition: A Review
... The speech recognition is a pattern recognition task and Artificial Neural Network (ANN) is a good ...and speech signal is dynamic as it varies over time as it ...in speech signals ... See full document
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A Bayesian view on acoustic model based techniques for robust speech recognition
... we review and examine for several uncer- tainty decoding [1–5], missing feature [6–9], and model adaptation techniques [10–19] how their compensation rules can be formulated as an approximated ... See full document
16
Histogram Equalization to Model Adaptation for Robust Speech Recognition
... clean speech models and compensated features in the decoding process of ...clean speech models can be fully adapted into acoustically matched speech models as far as the amount of ... See full document
8
Classification Techniques for Speech Recognition: A Review
... Automatic speech recognition (ASR) has been the most investigated topic in speech processing since early 1960s [1] .... Speech recognition is a popular and active area of research, used ... See full document
6
Speech Databases, Features Extraction Techniques And Classifiers With Special Reference To Automatic Speech Emotion Recognition
... the recognition of angry and neutral emotion is easier than the others as their pitch values are very ...The recognition rate for such kind of speech as well as for static models like GMM and HMM is ... See full document
8
Model adaptation and adaptive training for the recognition of dysarthric speech
... SI model and the intended target ...discriminative techniques have been exploited to model the acoustics of dysarthric ...successful techniques used till date. To get robust ... See full document
7
Recurrent neural network language model adaptation for multi-genre broadcast speech recognition and alignment
... or model-based. In feature-based adaptation, the input to the RNNLM is augmented with auxiliary features whilst model-based adaptation includes model fine-tuning and the ... See full document
12
Robust Features for Automatic Text-Independent Emotion Recognition from Speech
... subsisting features are transformed into an incipient set of ...of features typically slakes some desired ...of features, which is the case in Principal Component Analysis ...nonlinear ... See full document
9
Enhancing the magnitude spectrum of speech features for robust speech recognition
... those features used for training and ...normalization techniques such as cepstral mean subtraction (CMS) [26], cepstral mean and variance normalization (MVN) [27], MVN plus ARMA filtering (MVA) [28], ... See full document
20
A Robust Observation Model for Automatic Speech Recognition with Adaptive Thresholding
... of speech signal and increase the word error rate of automatic speech recognition ...paper review an observation model, the model used to study the effect of reverberation on ... See full document
6
A Robust Isolated Automatic Speech Recognition System using Machine Learning Techniques
... Mixture Model (GMM), HMMs like different statistical models are used for pattern matching that consider temporal changes and underlying variations of acoustic ...modelling techniques are used for speaker ... See full document
7
Speech dereverberation for enhancement and recognition using dynamic features constrained deep neural networks and feature adaptation
... many speech processing ...clean speech features (MFCC) from noisy ...reverberant features to clean ...the speech mask, which is then used for enhancing speech for robust ... See full document
18
Combining feature and model-based adaptation of RNNLMs for multi-genre broadcast speech recognition
... automatic speech recognition (ASR). This is because RNNLMs provide robust parameter estimation through the use of a continuous-space representation of words, and can gen- erally model longer ... See full document
6
Hmm dnn speech recognition techniques: a review
... DNN-HMM model and its application in different speech recognition ...non-linearity features but it is comparatively slow and takes a lot of time to converge to an optimal ...extraction ... See full document
5
Chameleon: A Language Model Adaptation Toolkit for Automatic Speech Recognition of Conversational Speech
... conversational speech recognition attracts much research attention in both academia and industry, since it is the very premise of build- ing intelligent conversational ...language model plays an ... See full document
6
VDCNN based Noise Robust Speech Recognition with Combination of GMM and MFCC Features
... the speech recognition systems require priori knowledge of twists and conditions in which it needs to ...automatic speech recognition in real time ...bank features (GFBs) and normalized ... See full document
9
Recent Progress in Robust Vocabulary Independent Speech Recognition
... Recent Progress in Robust Vocabulary Independent Speech Recognition Recent Progress in Robust Vocabulary Independent Speech Recognition Hsiao Wuen Hon and Kai Fu Lee School o f Computer Science Carneg[.] ... See full document
6
Independent Component Analysis and Time-Frequency Masking for Speech Recognition in Multitalker Conditions
... However, uncertainty estimation for the ICA output signals should be improved further, in order to approximate more closely the ideally achievable performance of this strategy. For this purpose, it will be interesting to ... See full document
13
Speech Recognition for English Language Pattern Recognition Approach
... their speech recognition research [10]. HMM is pattern recognition technique that is very popular during voice recognition system ...statistical model to present speech ... See full document
5
A Method for Correcting Errors in Speech Recognition Using the Statistical Features of Character Co occurrence
... A Method for Correcting Errors in Speech Recognition Using the Statistical Features of Character Co occurrence A Method for Correcting Errors in Speech Recognition Using the Statistical Features of Ch[.] ... See full document
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