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A Brief Review of Facial Emotion Recognition Based on Visual Information

机译:基于视觉信息的人脸情绪识别研究述评

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摘要

Facial emotion recognition (FER) is an important topic in the fields of computer vision and artificial intelligence owing to its significant academic and commercial potential. Although FER can be conducted using multiple sensors, this review focuses on studies that exclusively use facial images, because visual expressions are one of the main information channels in interpersonal communication. This paper provides a brief review of researches in the field of FER conducted over the past decades. First, conventional FER approaches are described along with a summary of the representative categories of FER systems and their main algorithms. Deep-learning-based FER approaches using deep networks enabling “end-to-end” learning are then presented. This review also focuses on an up-to-date hybrid deep-learning approach combining a convolutional neural network (CNN) for the spatial features of an individual frame and long short-term memory (LSTM) for temporal features of consecutive frames. In the later part of this paper, a brief review of publicly available evaluation metrics is given, and a comparison with benchmark results, which are a standard for a quantitative comparison of FER researches, is described. This review can serve as a brief guidebook to newcomers in the field of FER, providing basic knowledge and a general understanding of the latest state-of-the-art studies, as well as to experienced researchers looking for productive directions for future work.
机译:面部情感识别(FER)由于其巨大的学术和商业潜力,在计算机视觉和人工智能领域中是一个重要的主题。尽管可以使用多个传感器来进行FER,但由于视觉表达是人际交流中的主要信息渠道之一,因此本综述着重研究仅使用面部图像的研究。本文简要回顾了过去几十年来在FER领域进行的研究。首先,将描述常规FER方法以及FER系统及其主要算法的代表类别的摘要。然后介绍了使用支持“端到端”学习的深度网络的基于深度学习的FER方法。这篇综述还着眼于一种最新的混合深度学习方法,该方法结合了用于单个帧的空间特征的卷积神经网络(CNN)和用于连续帧的时间特征的长短期记忆(LSTM)。在本文的后半部分,简要回顾了公开可用的评估指标,并描述了与基准结果的比较,基准结果是FER研究定量比较的标准。这篇综述可以作为FER领域新手的简要指南,提供对最新技术研究的基础知识和一般理解,以及为有经验的研究人员寻找未来工作的指导性方向的经验丰富的研究人员。

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