Analysis of Speech Separation Performance Degradation on Emotional Speech Mixtures
Despite recent strides made in Speech Separation, most models are trained on datasets with neutral emotions. Emotional speech has been known to degrade performance of models in a variety of speech tasks, which reduces the effectiveness of these models when deployed in real-world scenarios. In this p...
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Zusammenfassung: | Despite recent strides made in Speech Separation, most models are trained on
datasets with neutral emotions. Emotional speech has been known to degrade
performance of models in a variety of speech tasks, which reduces the
effectiveness of these models when deployed in real-world scenarios. In this
paper we perform analysis to differentiate the performance degradation arising
from the emotions in speech from the impact of out-of-domain inference. This is
measured using a carefully designed test dataset, Emo2Mix, consisting of
balanced data across all emotional combinations. We show that even models with
strong out-of-domain performance such as Sepformer can still suffer significant
degradation of up to 5.1 dB SI-SDRi on mixtures with strong emotions. This
demonstrates the importance of accounting for emotions in real-world speech
separation applications. |
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DOI: | 10.48550/arxiv.2309.07458 |