Detecting Children Emotion through Facial Expression Recognition.

Uma Chinta,Adham Atyabi

2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC)(2023)

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摘要
Emotion detection has become an increasingly important area of research in recent years, as it has numerous applications in fields such as psychology, marketing, and human-computer interaction. Deep learning has shown success in emotion recognition due to the availability of large amounts of data and the ability to learn complex patterns in facial expressions, speech, and physiological signals when recognizing emotions. However, there are challenges associated with variations in lighting, pose, and facial expressions. This study introduces a novel deep-learning approach for emotion detection, leveraging the power of VGGFace2 to classify six emotional poses in children. The proposed approach outperforms the state-of-the-art in the field, achieving a success rate of 96.3% on the CAFE dataset. A comprehensive evaluation of the findings and a detailed discussion of their potential implications is offered as part of the study. Facial Emotion Recognition (FER), VGGFace2, emotion detection
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关键词
Facial Expressions,Facial Expression Recognition,Deep Learning,Human-computer Interaction,Face Recognition,Emotion Recognition,Emotional Faces,Variable Light,Facial Emotion Recognition,Machine Learning,Model Performance,Convolutional Neural Network,Support Vector Machine,Attention Deficit Hyperactivity Disorder,Emotional Expressions,Recognition Task,Support Vector Machine Classifier,Convolutional Neural Network Model,Deep Learning Techniques,Facial Features,Face Recognition Task,Emotion Recognition Task,Child Emotional,Recognition Of Children,Suggestions For Future Work,Emotion Recognition Accuracy,Detection In Children,Ability Of Children,Fine-tuning Strategy,Confusion Matrix
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