Emotion Recognition from Facial Expression using CNN

Ishika Agrawal, Adarsh Kumar, DG Swathi, V. Yashwanthi, Rajeshwari Hegde
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引用次数: 4

Abstract

In this paper, a time-efficient hybrid design for emotion recognition using facial expression is proposed which uses pre-processing stages and several Convolutional Neural Network (CNN) topologies to improve accuracy and training time. Sadness, happiness, contempt, anger, fear, surprise, and neutral are the seven primary human emotions anticipated. The model will be tested using the MMA Facial Expression database as well as other facial positions. To avoid bias towards a specific group of photos from a database, performance will be evaluated using cross-validation techniques. Proposed system was trained using a huge database consisting of around 35,000 images. Using our personal system, training time for the proposed model was drastically reduced to 30hrs. Finally, a Web application will be developed to make it more user-friendly in real-time.
基于CNN的面部表情情感识别
本文提出了一种高效的基于面部表情的情感识别混合设计,该设计利用预处理阶段和多种卷积神经网络(CNN)拓扑来提高准确率和训练时间。悲伤、快乐、轻蔑、愤怒、恐惧、惊讶和中性是人类预期的七种主要情绪。该模型将使用MMA面部表情数据库以及其他面部位置进行测试。为了避免对数据库中的特定照片组产生偏差,性能将使用交叉验证技术进行评估。所提出的系统使用由大约35,000张图像组成的庞大数据库进行训练。使用我们的个人系统,所提出的模型的训练时间大大减少到30小时。最后,将开发一个Web应用程序,使其在实时方面更加用户友好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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