Exemplar based recognition systems are characterized by the fact that, instead of abstracting large amounts of data into compact models, they store the observed data enriched with some annotations and infer on-the-fly from the data by finding those exemplars that resemble the input speech best. One advantage of exemplar based systems is that next to deriving what the current phone or word is, one can easily derive a wealth of meta-information concerning the chunk of audio under investigation. In this work we harvest meta-information from the set of best matching exemplars, that is thought to be relevant for the recognition such as word boundary predictions and speaker entropy. Integrating this meta-information into the recognition framework...
The output of a speech recognition system is a stream of text features that is overlayed by noise re...
This thesis introduces a novel noise robust automatic speech recognition scheme by introducing noise...
Summarization: Introduction -- 2: Speech recognitionand the detection-based approach -- 3: Conditio...
Exemplar based recognition systems are characterized by the fact that, instead of abstracting large ...
Solving real-world classification and recognition problems requires a principled way of modeling the...
© 2014 IEEE. Performing automatic speech recognition using exemplars (templates) holds the promise t...
Yılmaz E., Baby D., Van hamme H., ''Noise robust exemplar matching for speech enhancement: Applicati...
© 2016 IEEE. Exemplar-based acoustic modeling is based on labeled training segments that are compare...
In this paper, we explore the use of exemplar-based sparse representations (SRs) to map test feature...
© 2014 IEEE. We propose a novel exemplar-based feature enhancement method for automatic speech recog...
Recently, we have developed a probabilistic framework for segment-based speech recognition that repr...
In this paper, we describe important improvements that were recently introduced in our Discriminativ...
© 2015 Elsevier B.V. All rights reserved. The noise robust exemplar matching (N-REM) framework perfo...
Statistical data-driven methods and knowledge-based methods are two recent trends in Automatic Speec...
The task of word-level confidence estimation (CE) for automatic speech recognition (ASR) systems sta...
The output of a speech recognition system is a stream of text features that is overlayed by noise re...
This thesis introduces a novel noise robust automatic speech recognition scheme by introducing noise...
Summarization: Introduction -- 2: Speech recognitionand the detection-based approach -- 3: Conditio...
Exemplar based recognition systems are characterized by the fact that, instead of abstracting large ...
Solving real-world classification and recognition problems requires a principled way of modeling the...
© 2014 IEEE. Performing automatic speech recognition using exemplars (templates) holds the promise t...
Yılmaz E., Baby D., Van hamme H., ''Noise robust exemplar matching for speech enhancement: Applicati...
© 2016 IEEE. Exemplar-based acoustic modeling is based on labeled training segments that are compare...
In this paper, we explore the use of exemplar-based sparse representations (SRs) to map test feature...
© 2014 IEEE. We propose a novel exemplar-based feature enhancement method for automatic speech recog...
Recently, we have developed a probabilistic framework for segment-based speech recognition that repr...
In this paper, we describe important improvements that were recently introduced in our Discriminativ...
© 2015 Elsevier B.V. All rights reserved. The noise robust exemplar matching (N-REM) framework perfo...
Statistical data-driven methods and knowledge-based methods are two recent trends in Automatic Speec...
The task of word-level confidence estimation (CE) for automatic speech recognition (ASR) systems sta...
The output of a speech recognition system is a stream of text features that is overlayed by noise re...
This thesis introduces a novel noise robust automatic speech recognition scheme by introducing noise...
Summarization: Introduction -- 2: Speech recognitionand the detection-based approach -- 3: Conditio...