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R1-Omni: Explainable Omni-Multimodal Emotion Recognition with Reinforcement Learning

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In this work, we present the first application of Reinforcement Learning with Verifiable Reward (RLVR) to an Omni-multimodal large language model in the context of emotion recognition, a task where both visual and audio modalities play crucial roles. We leverage RLVR to optimize the Omni model, significantly enhancing its performance in three key aspects: reasoning capability, emotion recognition accuracy, and generalization ability. The introduction of RLVR not only improves the model's overall performance on in-distribution data but also demonstrates superior robustness when evaluated on out-of-distribution datasets. More importantly, the improved reasoning capability enables clear analysis of the contributions of different modalities, particularly visual and audio information, in the emotion recognition process. This provides valuable insights into the optimization of multimodal large language models.

Jiaxing Zhao, Xihan Wei, Liefeng Bo• 2025

Related benchmarks

TaskDatasetResultRank
Multimodal Sentiment AnalysisCMU-MOSI--
144
Emotion PerceptionEEmo-Bench
Overall Perception Score44.02
50
Dynamic Facial Expression RecognitionDFEW
WAR76.67
47
Multimodal Sentiment AnalysisCH-SIMS
F1 Score58.42
32
Multimodal Emotion RecognitionMER 2023
F1 Score59.61
30
Comprehensive Emotion AssessmentEEmo-Bench
Total Overall Score0.2553
25
Emotion RankingEEmo-Bench
Emotion Score15.53
25
Emotion Cognition and ReasoningHitEmotion ECR level 1.0 (test)
EER39.67
23
Emotion Understanding and AnalysisHitEmotion
DPTM (MF)37.54
23
Emotion Perception and RecognitionHitEmotion Level 1
FESD42.28
23
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