Abstract

In this paper, we study the face recognition and emotion recognition algorithms to monitor the emotions of preschool children. For previous emotion recognition focusing on faces, we propose to obtain more comprehensive information from faces, gestures, and contexts. Using the deep learning approach, we design a more lightweight network structure to reduce the number of parameters and save computational resources. There are not only innovations in applications, but also algorithmic enhancements. And face annotation is performed on the dataset, while a hierarchical sampling method is designed to alleviate the data imbalance phenomenon that exists in the dataset. A new feature descriptor, called “oriented gradient histogram from three orthogonal planes,” is proposed to characterize facial appearance variations. A new efficient geometric feature is also proposed to capture facial contour variations, and the role of audio methods in emotion recognition is explored. Multifeature fusion can be used to optimally combine different features. The experimental results show that the method is very effective compared to other recent methods in dealing with facial expression recognition problems about videos in both laboratory-controlled environments and outdoor environments. The method performed experiments on expression detection in a facial expression database. The experimental results are compared with data from previous studies and demonstrate the effectiveness of the proposed new method.

Highlights

  • Emotion recognition (ER) is the process of inferring that the other person is in a certain emotional state by observing, analysing, and identifying valid information about the target’s emotional state [1]

  • Automated facial emotion analysis systems aim to interpret and understand human mental activities by analysing facial expressions. e disciplines related to computer technology and artificial intelligence technology are developing rapidly, generating huge changes in society, and progressing in intelligence [4]

  • Emotion recognition is a field related to artificial intelligence, which can help computers to intelligently recognize human emotions [9, 10]

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Summary

Introduction

Emotion recognition (ER) is the process of inferring that the other person is in a certain emotional state by observing, analysing, and identifying valid information about the target’s emotional state [1]. E researchers proposed a facial expression recognition method based on appearance and shape feature extraction, which first performs decision fusion followed by emotion detection [19]. E method that uses facial elements and muscle movements to represent dynamic features eliminates the limitations imposed by methods that use static features, improving the correct recognition rate (CRR) [20] In relative terms, this approach effectively reduces the processing time, yet it is not a real-time video processing method involving multiple frames. By integrating LSTM networks, a separate deep learning model is proposed: an LSTM model for video-based face verification in the outdoors and a combined deep CNN model and LSTM model to improve spontaneous facial expression recognition. A method for facial expression recognition based on image sequences using the fusion of two LSTM models is proposed

Face Recognition and Emotion Recognition Algorithm Design Analysis
Results and Analysis
Background sample validity update
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