Domain Generalization with Triplet Network for Cross-Corpus Speech Emotion Recognition

Shi-wook Lee
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引用次数: 8

Abstract

Domain generalization is a major challenge for cross-corpus speech emotion recognition. The recognition performance built on "seen" source corpora is inevitably degraded when the systems are tested against "unseen" target corpora that have different speakers, channels, and languages. We present a novel framework based on a triplet network to learn more generalized features of emotional speech that are invariant across multiple corpora. To reduce the intrinsic discrepancies between source and target corpora, an explicit feature transformation based on the triplet network is implemented as a preprocessing step. Extensive comparison experiments are carried out on three emotional speech corpora; two English corpora, and one Japanese corpus. Remarkable improvements of up-to 35.61% are achieved for all cross-corpus speech emotion recognition, and we show that the proposed framework using the triplet network is effective for obtaining more generalized features across multiple emotional speech corpora.
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面向跨语料库语音情感识别的三元网络领域泛化
领域泛化是跨语料库语音情感识别面临的主要挑战。当系统针对具有不同说话者、频道和语言的“不可见”目标语料库进行测试时,基于“可见”源语料库的识别性能不可避免地会下降。我们提出了一种新的基于三重网络的框架来学习情感言语在多个语料库中不变的更广义的特征。为了减少源语料库和目标语料库之间的内在差异,采用基于三元网络的显式特征变换作为预处理步骤。对三种情绪语音语料库进行了广泛的对比实验;两个英语语料库,一个日语语料库。对于所有跨语料库的语音情感识别,我们取得了高达35.61%的显著改进,并且我们证明了使用三重网络的框架对于在多个情感语音语料库中获得更多的广义特征是有效的。
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