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Facial expression and attributes recognition based on multi-task learning of lightweight neural networks

A. Savchenko

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Abstract

In this paper, the multi-task learning of lightweight convolutional neural networks is studied for face identification and classification of facial attributes (age, gender, ethnicity) trained on cropped faces without margins. The necessity to fine-tune these networks to predict facial expressions is highlighted. Several models are presented based on lightweight architectures, such as MobileNet, EfficientNet and RexNet. It was experimentally demonstrated that they lead to near state-of-the-art results in age, gender and race recognition on the UTKFace dataset and emotion classification on the AffectNet dataset. Moreover, it is shown that the usage of the trained models as feature extractors of facial regions in video frames leads to 4.5% higher accuracy than the previously known state-of-the-art single models for the AFEW and the VGAF datasets from the EmotiW challenges.

Topics & Concepts

Convolutional neural networkComputer scienceTask (project management)Face (sociological concept)Feature (linguistics)Facial expressionFacial recognition systemArtificial intelligenceFeature extractionPattern recognition (psychology)Artificial neural networkMachine learningIdentification (biology)Speech recognitionTask analysisDeep learningEngineeringBotanySociologySocial scienceBiologyLinguisticsPhilosophySystems engineeringFace recognition and analysisEmotion and Mood RecognitionFace and Expression Recognition
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