@inproceedings{34005f0fd5924293a6cbc357b76d9c95,
title = "Kernel spectrogram models for source separation",
abstract = "In this study, we introduce a new framework called Kernel Additive Modelling for audio spectrograms that can be used for multichannel source separation. It assumes that the spectrogram of a source at any time-frequency bin is close to its value in a neighbourhood indicated by a source-specific proximity kernel. The rationale for this model is to easily account for features like periodicity, stability over time or frequency, self-similarity, etc. In many cases, such local dynamics are indeed much more natural to assess than any global model such as a tensor factorization. This framework permits one to use different proximity kernels for different sources and to estimate them blindly using their mixtures only. Estimation is performed using a variant of the kernel backfitting algorithm that allows for multichannel mixtures and permits parallelization. Experimental results on the separation of vocals from musical backgrounds demonstrate the efficiency of the approach.",
keywords = "audio source separation, spatial filtering, spectrogram models",
author = "Antoine Liutkus and Zafar Rafii and Pardo, {Bryan A} and Derry Fitzgerald and Laurent Daudet",
year = "2014",
doi = "10.1109/HSCMA.2014.6843240",
language = "English (US)",
isbn = "9781479931095",
series = "2014 4th Joint Workshop on Hands-Free Speech Communication and Microphone Arrays, HSCMA 2014",
publisher = "IEEE Computer Society",
pages = "6--10",
booktitle = "2014 4th Joint Workshop on Hands-Free Speech Communication and Microphone Arrays, HSCMA 2014",
address = "United States",
note = "2014 4th Joint Workshop on Hands-Free Speech Communication and Microphone Arrays, HSCMA 2014 ; Conference date: 12-05-2014 Through 14-05-2014",
}