The Applications of Facial Expression Recognition in Human-computer Interaction

Huan-huan Wang, Jingwei Gu
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引用次数: 5

Abstract

Facial expression is an important part of non-verbal communication and one common means of human communication. Expression recognition, as one of the important development directions of human-computer interaction, can improve the fluency, accuracy and naturalness of interaction. In recent years, deep learning using feature extraction of image data based on convolutional neural networks (CNN) has become more and more popular. Their popularity stems from their ability to extract good features from image data, for DCNN’s computationally intensive tasks can be run on the GPU to achieve high performance at very low consumption. This algorithm can achieve much higher accuracy than traditional ones, making it possible to commercialize and utilize. This paper introduces the basic principles and methods of expression recognition, and classifies the common recognition methods. The cases of improving recognition rate and robustness after applying multiple algorithms are reviewed in detail. And the matters to be solved for further application of this method are also discussed. Additionally, the technical methods and approaches of expression recognition in industrial design, particularly in emotional interaction design of industrial products, are elucidated.
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面部表情识别在人机交互中的应用
面部表情是非语言交际的重要组成部分,是人类交际的一种常用手段。表情识别可以提高人机交互的流畅性、准确性和自然度,是人机交互的重要发展方向之一。近年来,基于卷积神经网络(CNN)对图像数据进行特征提取的深度学习越来越流行。它们的流行源于它们从图像数据中提取良好特征的能力,因为DCNN的计算密集型任务可以在GPU上运行,以非常低的消耗实现高性能。该算法可以实现比传统算法更高的精度,为商业化和利用提供了可能。介绍了表情识别的基本原理和方法,并对常用的识别方法进行了分类。详细回顾了应用多种算法提高识别率和鲁棒性的实例。并对该方法进一步应用需要解决的问题进行了讨论。阐述了工业设计特别是工业产品情感交互设计中表情识别的技术方法和途径。
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