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Multi-modal Fusion Using Spatio-temporal and Static Features for Group Emotion Recognition

Mo Sun, Jian Li, Hui Feng, Wei Gou, Haifeng Shen, Jian Tang, Yi Yang, Jieping Ye

202014 citationsDOI

Abstract

This paper presents our approach for Audio-video Group Emotion Recognition sub-challenge in the EmotiW 2020. The task is to classify a video into one of the group emotions such as positive, neutral, and negative. Our approach exploits two different feature levels for this task, spatio-temporal feature and static feature level. In spatio-temporal feature level, we adopt multiple input modalities (RGB, RGB difference, optical flow, warped optical flow) into multiple video classification network to train the spatio-temporal model. In static feature level, we crop all faces and bodies in an image with the state-of the-art human pose estimation method and train kinds of CNNs with the image-level labels of group emotions. Finally, we fuse all 14 models result together, and achieve the third place in this sub-challenge with classification accuracies of 71.93% and 70.77% on the validation set and test set, respectively.

Topics & Concepts

Computer scienceOptical flowArtificial intelligenceFeature (linguistics)RGB color modelFuse (electrical)Pattern recognition (psychology)Task (project management)Feature extractionSet (abstract data type)Computer visionModalImage (mathematics)EngineeringPolymer chemistryPhilosophyChemistrySystems engineeringProgramming languageLinguisticsElectrical engineeringVideo Surveillance and Tracking MethodsSpeech and Audio ProcessingHuman Pose and Action Recognition