Computational speech segregation attempts to automatically separate speech from noise. This is challenging in conditions with interfering talkers and low signal-to-noise ratios. Recent approaches have adopted deep neural networks and successfully demonstrated speech intelligibility improvements. A selection of components may be responsible for the success with these state-of-the-art approaches: the system architecture, a time frame concatenation technique and the learning objective. The aim of this study was to explore the roles and the relative contributions of these components by measuring speech intelligibility in normal-hearing listeners. A substantial improvement of 25.4 percentage points in speech intelligibility scores was found goin...
The time-frequency mask and the magnitude spectrum are two common targets for deep learning-based sp...
Human auditory cortex excels at selectively suppressing background noise to focus on a target speake...
Machine-learning based approaches to speech enhancement have recently shown great promise for improv...
<p>Contains all the data:</p> <p>Bentsen, T., T.May, A. A. Kresnner, and T. Dau. The benefit of com...
In this paper, we considered the problem of the speech enhancement similar to the real-world environ...
In the speech communication process, the desirable speech needs to be addressed under the influence ...
A deep neural networks (DNN) based close talk speech segregation algorithm is introduced. One nearby...
A neural network based model is developed to quantify speech intelligibility by blind-estimating spe...
Speech understanding in adverse acoustic environments is still a major problem for users of hearingi...
Speech intelligibility represents how comprehensible a speech is. It is more important than speech q...
Speech understanding in noisy environments is still one of the major challenges for cochlear implant...
Recent literature indicates increasing interest in deep neural networks for use in speech enhancemen...
Current methods of speech intelligibility estimation rely on the subjective judgements of trained li...
Many studies on deep learning-based speech enhancement (SE) utilizing the computational auditory sce...
Speech enhancement systems aim to improve the quality and intelligibility of noisy speech. In this s...
The time-frequency mask and the magnitude spectrum are two common targets for deep learning-based sp...
Human auditory cortex excels at selectively suppressing background noise to focus on a target speake...
Machine-learning based approaches to speech enhancement have recently shown great promise for improv...
<p>Contains all the data:</p> <p>Bentsen, T., T.May, A. A. Kresnner, and T. Dau. The benefit of com...
In this paper, we considered the problem of the speech enhancement similar to the real-world environ...
In the speech communication process, the desirable speech needs to be addressed under the influence ...
A deep neural networks (DNN) based close talk speech segregation algorithm is introduced. One nearby...
A neural network based model is developed to quantify speech intelligibility by blind-estimating spe...
Speech understanding in adverse acoustic environments is still a major problem for users of hearingi...
Speech intelligibility represents how comprehensible a speech is. It is more important than speech q...
Speech understanding in noisy environments is still one of the major challenges for cochlear implant...
Recent literature indicates increasing interest in deep neural networks for use in speech enhancemen...
Current methods of speech intelligibility estimation rely on the subjective judgements of trained li...
Many studies on deep learning-based speech enhancement (SE) utilizing the computational auditory sce...
Speech enhancement systems aim to improve the quality and intelligibility of noisy speech. In this s...
The time-frequency mask and the magnitude spectrum are two common targets for deep learning-based sp...
Human auditory cortex excels at selectively suppressing background noise to focus on a target speake...
Machine-learning based approaches to speech enhancement have recently shown great promise for improv...