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Explainable Multimodal Emotion Recognition

About

Multimodal emotion recognition is an important research topic in artificial intelligence, whose main goal is to integrate multimodal clues to identify human emotional states. Current works generally assume accurate labels for benchmark datasets and focus on developing more effective architectures. However, emotion annotation relies on subjective judgment. To obtain more reliable labels, existing datasets usually restrict the label space to some basic categories, then hire plenty of annotators and use majority voting to select the most likely label. However, this process may result in some correct but non-candidate or non-majority labels being ignored. To ensure reliability without ignoring subtle emotions, we propose a new task called ``Explainable Multimodal Emotion Recognition (EMER)''. Unlike traditional emotion recognition, EMER takes a step further by providing explanations for these predictions. Through this task, we can extract relatively reliable labels since each label has a certain basis. Meanwhile, we borrow large language models (LLMs) to disambiguate unimodal clues and generate more complete multimodal explanations. From them, we can extract richer emotions in an open-vocabulary manner. This paper presents our initial attempt at this task, including introducing a new dataset, establishing baselines, and defining evaluation metrics. In addition, EMER can serve as a benchmark task to evaluate the audio-video-text understanding performance of multimodal LLMs.

Zheng Lian, Haiyang Sun, Licai Sun, Hao Gu, Zhuofan Wen, Siyuan Zhang, Shun Chen, Mingyu Xu, Ke Xu, Kang Chen, Lan Chen, Shan Liang, Ya Li, Jiangyan Yi, Bin Liu, Jianhua Tao• 2023

Related benchmarks

TaskDatasetResultRank
Multimodal Sentiment AnalysisCMU-MOSI (test)--
385
Multimodal Sentiment AnalysisCH-SIMS (test)--
108
Sentiment AnalysisCMU-MOSEI (test)--
96
Emotion RecognitionMELD (test)
Weighted F157.63
89
Emotion ClassificationIEMOCAP (test)
Weighted-F162.19
61
Emotion ClassificationMER 2023 (test)
Weighted F178.54
25
Emotion ClassificationMER 2024 (test)
Weighted F178.8
25
Sentiment AnalysisCH-SIMS v2 (test)
Binary Accuracy86.29
25
Fine-grained Emotion ClassificationOV-MERD+ (test)
Weighted F162.52
25
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