Deep Learning for Real-Time Robust Facial Expression Analysis

V. Khryashchev, L. Ivanovsky, A. Priorov
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引用次数: 1

Abstract

The aim of this investigation is to classify real-life facial images into one of six types of emotions. For solving this problem, we propose to use deep machine learning algorithms and convolutional neural network (CNN). CNN is a modern type of neural network, which allows for rapid detection of various objects, as well as to make an effective object classification. For acceleration of CNN learning stage, we use supercomputer NVIDIA DGX-1. This process was implemented in parallel on a large number of independent streams on GPU. Numerical experiments for algorithms were performed on the images of Multi-Pie image database with various lighting of scene and angle rotation of head. For developed models, several metrics of quality were calculated. The designing algorithm was used in real-time video processing in human-computer interaction systems. Moreover, expression recognition can apply in such fields as retail analysis, security, video games, animations, psychiatry, automobile safety, educational software, etc.
用于实时鲁棒面部表情分析的深度学习
这项调查的目的是将现实生活中的面部图像分为六种情绪类型之一。为了解决这个问题,我们建议使用深度机器学习算法和卷积神经网络(CNN)。CNN是一种现代类型的神经网络,它可以快速检测各种物体,并进行有效的物体分类。为了加速CNN的学习阶段,我们使用了超级计算机NVIDIA DGX-1。该过程在GPU上的大量独立流上并行实现。在Multi-Pie图像数据库中不同场景光照和头部角度旋转的图像上进行了算法的数值实验。对于已开发的模型,计算了几个质量度量。该设计算法已应用于人机交互系统中的实时视频处理。此外,表情识别还可以应用于零售分析、安全、电子游戏、动画、精神病学、汽车安全、教育软件等领域。
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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