Facial expression recognition (FER) in the wild is a challenging pattern recognition task affected by the images' low quality and has attracted broad interest in computer vision. Existing FER methods failed to obtain sufficient accuracy to support the practical applications, especially in scenarios with low fault tolerance, which limits the adaptability of FER. Targeting exploring the possibility of further improving the accuracy of FER in the wild, this paper proposes a novel single model named R18+FAML and an ensemble model named R18+FAML-FGA-T2V, which applies intra-feature fusion within a single network, feature fusion among multiple networks, and the ensemble decision strategy.
View Article and Find Full Text PDFWith the cutting-edge advancements in computer vision, facial expression recognition (FER) is an active research area due to its broad practical applications. It has been utilized in various fields, including education, advertising and marketing, entertainment and gaming, health, and transportation. The facial expression recognition-based systems are rapidly evolving due to new challenges, and significant research studies have been conducted on both basic and compound facial expressions of emotions; however, measuring emotions is challenging.
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