Quantitative Evidence on Overlooked Aspects of Enrollment Speaker Embeddings for Target Speaker Separation

October 23, 2022 ยท Declared Dead ยท ๐Ÿ› IEEE International Conference on Acoustics, Speech, and Signal Processing

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Authors Xiaoyu Liu, Xu Li, Joan Serrร  arXiv ID 2210.12635 Category cs.SD: Sound Cross-listed cs.AI, eess.AS Citations 10 Venue IEEE International Conference on Acoustics, Speech, and Signal Processing Last Checked 3 months ago
Abstract
Single channel target speaker separation (TSS) aims at extracting a speaker's voice from a mixture of multiple talkers given an enrollment utterance of that speaker. A typical deep learning TSS framework consists of an upstream model that obtains enrollment speaker embeddings and a downstream model that performs the separation conditioned on the embeddings. In this paper, we look into several important but overlooked aspects of the enrollment embeddings, including the suitability of the widely used speaker identification embeddings, the introduction of the log-mel filterbank and self-supervised embeddings, and the embeddings' cross-dataset generalization capability. Our results show that the speaker identification embeddings could lose relevant information due to a sub-optimal metric, training objective, or common pre-processing. In contrast, both the filterbank and the self-supervised embeddings preserve the integrity of the speaker information, but the former consistently outperforms the latter in a cross-dataset evaluation. The competitive separation and generalization performance of the previously overlooked filterbank embedding is consistent across our study, which calls for future research on better upstream features.
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