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EmoCLIP: A Vision-Language Method for Zero-Shot Video Facial Expression Recognition

About

Facial Expression Recognition (FER) is a crucial task in affective computing, but its conventional focus on the seven basic emotions limits its applicability to the complex and expanding emotional spectrum. To address the issue of new and unseen emotions present in dynamic in-the-wild FER, we propose a novel vision-language model that utilises sample-level text descriptions (i.e. captions of the context, expressions or emotional cues) as natural language supervision, aiming to enhance the learning of rich latent representations, for zero-shot classification. To test this, we evaluate using zero-shot classification of the model trained on sample-level descriptions on four popular dynamic FER datasets. Our findings show that this approach yields significant improvements when compared to baseline methods. Specifically, for zero-shot video FER, we outperform CLIP by over 10\% in terms of Weighted Average Recall and 5\% in terms of Unweighted Average Recall on several datasets. Furthermore, we evaluate the representations obtained from the network trained using sample-level descriptions on the downstream task of mental health symptom estimation, achieving performance comparable or superior to state-of-the-art methods and strong agreement with human experts. Namely, we achieve a Pearson's Correlation Coefficient of up to 0.85 on schizophrenia symptom severity estimation, which is comparable to human experts' agreement. The code is publicly available at: https://github.com/NickyFot/EmoCLIP.

Niki Maria Foteinopoulou, Ioannis Patras• 2023

Related benchmarks

TaskDatasetResultRank
Dynamic Facial Expression RecognitionDFEW
WAR62.12
47
Categorical Emotion RecognitionMAFW 11-class
UAR34.24
23
Dynamic Facial Expression RecognitionDFEW (5-fold cross-val)
UAR58.04
23
Dynamic Facial Expression RecognitionDFEW (test)
UAR58.04
20
Dynamic Facial Expression RecognitionFERV39k official protocol
UAR31.41
19
Dynamic Facial Expression RecognitionFERV39k (test)
UAR31.41
19
Facial Expression RecognitionStressID
WAR63.5
13
Facial Expression RecognitionBioVid
WAR67.7
13
Facial Expression RecognitionBAH
WAR56.2
13
Expression ClassificationMAFW 43 compound expressions 1.0 (test)
UAR6.58
12
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