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Continuous Emotion Recognition with Audio-visual Leader-follower Attentive Fusion

Su Zhang, Yi Ding, Ziquan Wei, Cuntai Guan

202128 citationsDOI

Abstract

We propose an audio-visual spatial-temporal deep neural network with: (1) a visual block containing a pre-trained 2D-CNN followed by a temporal convolutional network (TCN); (2) an aural block containing several parallel TCNs; and (3) a leader-follower attentive fusion block combining the audio-visual information. The TCN with large history coverage enables our model to exploit spatial-temporal information within a much larger window length (i.e., 300) than that from the baseline and state-of-the-art methods (i.e., 36 or 48). The fusion block emphasizes the visual modality while exploits the noisy aural modality using the inter-modality attention mechanism. To make full use of the data and alleviate over-fitting, the cross-validation is carried out on the training and validation set. The concordance correlation coefficient (CCC) centering is used to merge the results from each fold. On the test (validation) set of the Aff-Wild2 database, the achieved CCC is 0.463(0.469) for valence and 0.492(0.649) for arousal, which significantly outperforms the baseline method with the corresponding CCC of 0.200(0.210) and 0.190(0.230) for valence and arousal, respectively. The code is available at https://github.com/sucv/ABAW2.

Topics & Concepts

Computer scienceAudio visualConvolutional neural networkArtificial intelligenceExploitModality (human–computer interaction)Speech recognitionConcordance correlation coefficientMerge (version control)Pattern recognition (psychology)Test setDeep learningBlock (permutation group theory)Valence (chemistry)VisualizationMathematicsInformation retrievalMultimediaPhysicsComputer securityGeometryStatisticsQuantum mechanicsSpeech and Audio ProcessingMusic and Audio ProcessingEmotion and Mood Recognition