Efficient Emotion Recognition based on Hybrid Emotion Recognition Neural Network

Yang-Yen Ou, Bo-Hao Su, Shih-Pang Tseng, Liu-Yi-Cheng Hsu, Jhing-Fa Wang, Ta-Wen Kuan
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Abstract

The practical application of computer vision on robots such as emotion, age, gender recognition can improve the interactive experience between robots and users. This paper uses a webcam to capture the image as a visual system input. Then, facial image is obtained through high-performance face detect neural network. Facial landmarks is used to correct the face. After that, we input facial image into the multi-person emotion recognition system. In order to improve the accuracy of emotion recognition, a hybrid emotion recognition is proposed based on Convolutional Neural Network. Taking facial points and facial image as input, training hybrid neural network to convergence and outputting five home common emotion, neutral, happy, surprise, sad and angry. The other hand, the Microsoft Azure API is used for age and gender recognition. Finally, the experimental result shows that the accuracy of emotion recognition is as high as 86.14%. In practical applications, the system can recognize the emotions, age and gender up to thousands of people at the same time.
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基于混合情绪识别神经网络的高效情绪识别
计算机视觉在机器人情感、年龄、性别识别等方面的实际应用,可以改善机器人与用户之间的交互体验。本文使用网络摄像头捕捉图像作为视觉系统输入。然后,通过高性能的人脸检测神经网络获得人脸图像。面部标志是用来矫正面部的。然后,将人脸图像输入到多人情感识别系统中。为了提高情感识别的准确率,提出了一种基于卷积神经网络的混合情感识别方法。以人脸点和人脸图像为输入,训练混合神经网络收敛输出家中常见的五种情绪:中性、快乐、惊喜、悲伤、愤怒。另一方面,微软Azure API用于年龄和性别识别。最后,实验结果表明,该方法的情绪识别准确率高达86.14%。在实际应用中,该系统可以同时识别多达数千人的情绪、年龄和性别。
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