In this paper we develop different mathematical models in the framework of the multi-stream paradigm for noise robust ASR, and discuss their close relationship with human speech perception. Largely inspired by Fletcher's "product-of-errors" rule in psychoacoustics, multi-band ASR aims for robustness to data mismatch through the exploitation of spectral redundancy, while making minimum assumptions about noise type. Previous ASR tests have shown that independent sub-band processing can lead to decreased recognition performance with clean speech. We have overcome this problem by considering every combination of data sub-bands as an independent data stream. After introducing the background to multi-band ASR, we show how this "full combination" ...
EEG recordings provide an important means of brain-computer communication, but their classification ...
Significant strides have been made in the field of automatic speech recognition over the past three ...
In this thesis, a joint optimal method for clean speech estimation and ASR in a mismatched condition...
In this paper we develop different mathematical models in the framework of the multi-stream paradigm...
Automatic speech recognition (ASR) performance falls dramatically with the level of mismatch between...
Despite sophisticated present day automatic speech recognition (ASR) techniques, a single recognizer...
In this thesis, the framework of multi-stream combination has been explored to improve the noise rob...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
While a lot of progress has been made during the last years in the field of Automatic Speech recogni...
While a lot of progress has been made during the last years in the field of Automatic Speech recogni...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
Automatic speech recognition (ASR) systems frequently work in a noisy environment. As they are often...
Automatic speech recognition (ASR) systems have made dramatic performance leaps in the recent past. ...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
EEG recordings provide an important means of brain-computer communication, but their classification ...
Significant strides have been made in the field of automatic speech recognition over the past three ...
In this thesis, a joint optimal method for clean speech estimation and ASR in a mismatched condition...
In this paper we develop different mathematical models in the framework of the multi-stream paradigm...
Automatic speech recognition (ASR) performance falls dramatically with the level of mismatch between...
Despite sophisticated present day automatic speech recognition (ASR) techniques, a single recognizer...
In this thesis, the framework of multi-stream combination has been explored to improve the noise rob...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
While a lot of progress has been made during the last years in the field of Automatic Speech recogni...
While a lot of progress has been made during the last years in the field of Automatic Speech recogni...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
Automatic speech recognition (ASR) systems frequently work in a noisy environment. As they are often...
Automatic speech recognition (ASR) systems have made dramatic performance leaps in the recent past. ...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
EEG recordings provide an important means of brain-computer communication, but their classification ...
Significant strides have been made in the field of automatic speech recognition over the past three ...
In this thesis, a joint optimal method for clean speech estimation and ASR in a mismatched condition...