Can Emotion Fool Anti-spoofing?
Can Emotion Fool Anti-spoofing?
Traditional anti-spoofing focuses on models and datasets built on synthetic speech with mostly neutral state, neglecting diverse emotional variations. As a result, their robustness against high-quality, emotionally expressive synthetic speech is uncertain. We address this by introducing EmoSpoof-TTS, a corpus of emotional text-to-speech samples. Our analysis shows existing anti-spoofing models struggle with emotional synthetic speech, exposing risks of emotion-targeted attacks. Even trained on emotional data, the models underperform due to limited focus on emotional aspect and show performance disparities across emotions. This highlights the need for emotion-focused anti-spoofing paradigm in both dataset and methodology. We propose GEM, a gated ensemble of emotion-specialized models with a speech emotion recognition gating network. GEM performs effectively across all emotions and neutral state, improving defenses against spoofing attacks. We release the EmoSpoof-TTS Dataset: https://emospoof-tts.github.io/Dataset/
Aurosweta Mahapatra、Ismail Rasim Ulgen、Abinay Reddy Naini、Carlos Busso、Berrak Sisman
计算技术、计算机技术
Aurosweta Mahapatra,Ismail Rasim Ulgen,Abinay Reddy Naini,Carlos Busso,Berrak Sisman.Can Emotion Fool Anti-spoofing?[EB/OL].(2025-05-29)[2025-06-22].https://arxiv.org/abs/2505.23962.点此复制
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