SERE is a new semi-supervised method for cross-lingual speech emotion recognition that needs only 5-shot source labels and no target labels or translations by using resonance embeddings and interaction losses.
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Semantic-Emotional Resonance Embedding: A Semi-Supervised Paradigm for Cross-Lingual Speech Emotion Recognition
SERE is a new semi-supervised method for cross-lingual speech emotion recognition that needs only 5-shot source labels and no target labels or translations by using resonance embeddings and interaction losses.