Many audio processing tasks require perceptual assessment. The “gold standard” of obtaining human judgments is time-consuming, expensive, and cannot be used as an optimization criterion. On the other hand, automated metrics are efficient to compute but often correlate poorly with human judgment, particularly for audio differences at the threshold of human detection. In this work, we construct a metric by fitting a deep neural network to a new large dataset of crowdsourced human judgments. Subjects are prompted to answer a straightforward, objective question: are two recordings identical or not? These pairs are algorithmically generated under a variety of perturbations, including noise, reverb, and compression artifacts; the perturbation spa...
A growing need for on-device machine learning has led to an increased interest in light-weight neura...
The paper examines the usage of Convolutional Bidirectional Recurrent Neural Network (CBRNN) for a p...
Standard evaluation metrics such as the Inception score and Fréchet Audio Distance provide a general...
Many speech processing methods based on deep learning require an automatic and differentiable audio ...
In this study, we investigate the feasibility of utilizing state-of-the-art image perceptual metrics...
Recent years have seen considerable advances in audio synthesis with deep generative models. However...
Interpreting Deep Neural Networks (DNN) remains one of the major challenges in machine learning. Met...
Abstract. We aim to predict the perceived quality of estimated source signals in the context of audi...
© 2019 Association for Computing Machinery. Generative audio models based on neural networks have le...
International audienceUnderstanding how humans use auditory cues to interpret their surroundings is ...
Deep learning models have improved cutting-edge technologies in many research areas, but their black...
Perceptual measures are usually considered more reliable than instrumental measures for evaluating ...
The effort of listening to spoken language is a highly important perceptive measure for the design o...
Increasing digital storage and transmission of speech and audio necessitates the use of codecs that ...
Perceptual measurements have typically been recognised as the most reliable measurements in assessin...
A growing need for on-device machine learning has led to an increased interest in light-weight neura...
The paper examines the usage of Convolutional Bidirectional Recurrent Neural Network (CBRNN) for a p...
Standard evaluation metrics such as the Inception score and Fréchet Audio Distance provide a general...
Many speech processing methods based on deep learning require an automatic and differentiable audio ...
In this study, we investigate the feasibility of utilizing state-of-the-art image perceptual metrics...
Recent years have seen considerable advances in audio synthesis with deep generative models. However...
Interpreting Deep Neural Networks (DNN) remains one of the major challenges in machine learning. Met...
Abstract. We aim to predict the perceived quality of estimated source signals in the context of audi...
© 2019 Association for Computing Machinery. Generative audio models based on neural networks have le...
International audienceUnderstanding how humans use auditory cues to interpret their surroundings is ...
Deep learning models have improved cutting-edge technologies in many research areas, but their black...
Perceptual measures are usually considered more reliable than instrumental measures for evaluating ...
The effort of listening to spoken language is a highly important perceptive measure for the design o...
Increasing digital storage and transmission of speech and audio necessitates the use of codecs that ...
Perceptual measurements have typically been recognised as the most reliable measurements in assessin...
A growing need for on-device machine learning has led to an increased interest in light-weight neura...
The paper examines the usage of Convolutional Bidirectional Recurrent Neural Network (CBRNN) for a p...
Standard evaluation metrics such as the Inception score and Fréchet Audio Distance provide a general...