Dialog+ in Broadcasting: First Field Tests Using Deep-Learning-Based Dialogue Enhancement
Abstract
Difficulties in following speech due to loud background sounds are common in broadcasting. Object-based audio, e.g., MPEG-H Audio solves this problem by providing a user-adjustable speech level. While object-based audio is gaining momentum, transitioning to it requires time and effort. Also, lots of content exists, produced and archived outside the object-based workflows. To address this, Fraunhofer IIS has developed a deep-learning solution called Dialog+, capable of enabling speech level personalization also for content with only the final audio tracks available. This paper reports on public field tests evaluating Dialog+, conducted together with Westdeutscher Rundfunk (WDR) and Bayerischer Rundfunk (BR), starting from September 2020. To our knowledge, these are the first large-scale tests of this kind. As part of one of these, a survey with more than 2,000 participants showed that 90% of the people above 60 years old have problems in understanding speech in TV "often" or "very often". Overall, 83% of the participants liked the possibility to switch to Dialog+, including those who do not normally struggle with speech intelligibility. Dialog+ introduces a clear benefit for the audience, filling the gap between object-based broadcasting and traditionally produced material.
Cite
@article{arxiv.2112.09494,
title = {Dialog+ in Broadcasting: First Field Tests Using Deep-Learning-Based Dialogue Enhancement},
author = {Matteo Torcoli and Christian Simon and Jouni Paulus and Davide Straninger and Alfred Riedel and Volker Koch and Stefan Wits and Daniela Rieger and Harald Fuchs and Christian Uhle and Stefan Meltzer and Adrian Murtaza},
journal= {arXiv preprint arXiv:2112.09494},
year = {2021}
}
Comments
Presented at IBC 2021 (International Broadcasting Convention)