Non-intrusive intelligibility prediction is important for its application in realistic scenarios, where a clean reference signal is difficult to access. The construction of many non-intrusive predictors require either ground truth intelligibility labels or clean reference signals for supervised learning. In this work, we leverage an unsupervised uncertainty estimation method for predicting speech intelligibility, which does not require intelligibility labels or reference signals to train the predictor. Our experiments demonstrate that the uncertainty from state-of-the-art end-to-end automatic speech recognition (ASR) models is highly correlated with speech intelligibility. The proposed method is evaluated on two databases and the results sh...
The effect of additive white Gaussian noise and high-pass filtering on speech intelligibility at sig...
Abstract: In this paper we investigate the use of an automatic speech recognizer (Google Speech API)...
Objective speech intelligibility measurement techniques like AI (Articulation Index) and AI based ST...
The estimation of speech intelligibility is still far from being a solved problem. Especially one as...
An accurate objective speech intelligibility prediction algorithms is of great interest for many app...
This paper proposes neural models to predict Speech Intelligibility (SI),both by prediction of estab...
A non-intrusive method is introduced to predict binaural speech intelligibility in noise directly fr...
This paper deals with the problem of predicting the average intelligibility of noisy and potentially...
Intelligibility is widely used to measure the severity of articulatory problems in pathological spee...
We address the problem of inferring a speaker’s level of certainty based on prosodic information in ...
Current methods of speech intelligibility estimation rely on the subjective judgements of trained li...
Over the past decades, the dominant approach towards building automatic speech recognition (ASR) sys...
Most existing intelligibility indices require access to the input (clean) reference signal to predic...
In digital speech-communication systems like mobile phones, public address systems and hearing aids,...
Speech intelligibility prediction of noisy and processed noisy speech is important in a number of ap...
The effect of additive white Gaussian noise and high-pass filtering on speech intelligibility at sig...
Abstract: In this paper we investigate the use of an automatic speech recognizer (Google Speech API)...
Objective speech intelligibility measurement techniques like AI (Articulation Index) and AI based ST...
The estimation of speech intelligibility is still far from being a solved problem. Especially one as...
An accurate objective speech intelligibility prediction algorithms is of great interest for many app...
This paper proposes neural models to predict Speech Intelligibility (SI),both by prediction of estab...
A non-intrusive method is introduced to predict binaural speech intelligibility in noise directly fr...
This paper deals with the problem of predicting the average intelligibility of noisy and potentially...
Intelligibility is widely used to measure the severity of articulatory problems in pathological spee...
We address the problem of inferring a speaker’s level of certainty based on prosodic information in ...
Current methods of speech intelligibility estimation rely on the subjective judgements of trained li...
Over the past decades, the dominant approach towards building automatic speech recognition (ASR) sys...
Most existing intelligibility indices require access to the input (clean) reference signal to predic...
In digital speech-communication systems like mobile phones, public address systems and hearing aids,...
Speech intelligibility prediction of noisy and processed noisy speech is important in a number of ap...
The effect of additive white Gaussian noise and high-pass filtering on speech intelligibility at sig...
Abstract: In this paper we investigate the use of an automatic speech recognizer (Google Speech API)...
Objective speech intelligibility measurement techniques like AI (Articulation Index) and AI based ST...