Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

When Tone and Words Disagree: Towards Robust Speech Emotion Recognition under Acoustic-Semantic Conflict

About

Speech Emotion Recognition (SER) systems often assume congruence between vocal emotion and lexical semantics. However, in real-world interactions, acoustic-semantic conflict is common yet overlooked, where the emotion conveyed by tone contradicts the literal meaning of spoken words. We show that state-of-the-art SER models, including ASR-based, self-supervised learning (SSL) approaches and Audio Language Models (ALMs), suffer performance degradation under such conflicts due to semantic bias or entangled acoustic-semantic representations. To address this, we propose the Fusion Acoustic-Semantic (FAS) framework, which explicitly disentangles acoustic and semantic pathways and bridges them through a lightweight, query-based attention module. To enable systematic evaluation, we introduce the Conflict in Acoustic-Semantic Emotion (CASE), the first dataset dominated by clear and interpretable acoustic-semantic conflicts in varied scenarios. Extensive experiments demonstrate that FAS consistently outperforms existing methods in both in-domain and zero-shot settings. Notably, on the CASE benchmark, conventional SER models fail dramatically, while FAS sets a new SOTA with 59.38% accuracy. Our code and datasets is available at https://github.com/24DavidHuang/FAS.

Dawei Huang, Yongjie Lv, Ruijie Xiong, Chunxiang Jin, Xiaojiang Peng• 2026

Related benchmarks

TaskDatasetResultRank
Speech Emotion RecognitionMELD In-Domain v1 (test)
Accuracy51.89
14
Speech Emotion RecognitionESD In-Domain v1 (test)
ACC87.27
13
Speech Emotion RecognitionEMOVO Zero-Shot v1 (test)
Accuracy40.03
13
Speech Emotion RecognitionEmo-Emilia Zero-Shot v1 (test)
Accuracy (ACC)51.14
13
Speech Emotion RecognitionCASE Zero-Shot v1 (test)
Accuracy (ACC)59.38
12
Speech Emotion RecognitionRAVDESS In-Domain v1 (test)
Accuracy76.61
12
Speech Emotion RecognitionEmoDB Zero-Shot v1 (test)
Accuracy68.1
12
Showing 7 of 7 rows

Other info

Follow for update