title: ConcateNet Dialogue Separation Using Local And Global Feature Concatenation

publish date:

2024-08-16

authors:

Mhd Modar Halimeh et.al.

paper id

2408.08729v1

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abstracts:

Dialogue separation involves isolating a dialogue signal from a mixture, such as a movie or a TV program. This can be a necessary step to enable dialogue enhancement for broadcast-related applications. In this paper, ConcateNet for dialogue separation is proposed, which is based on a novel approach for processing local and global features aimed at better generalization for out-of-domain signals. ConcateNet is trained using a noise reduction-focused, publicly available dataset and evaluated using three datasets: two noise reduction-focused datasets (in-domain), which show competitive performance for ConcateNet, and a broadcast-focused dataset (out-of-domain), which verifies the better generalization performance for the proposed architecture compared to considered state-of-the-art noise-reduction methods.

QA:

coming soon

编辑整理: wanghaisheng 更新日期:2024 年 8 月 19 日