A Survey on Deep Learning Algorithms in Facial Emotion Detection and Recognition

Prince Awuah Baffour, Henry Nunoo-Mensah, Eliel Keelson, Benjamin Kommey
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引用次数: 3

Abstract

Facial emotion recognition (FER) forms part of affective computing, where computers are trained to recognize human emotion from human expressions. Facial Emotion Recognition is very necessary for bridging the communication gap between humans and computers because facial expressions are a form of communication that transmits 55% of a person's emotional and mental state in a total face-to-face communication spectrum. Breakthroughs in this field also make computer systems (robotic systems) better serve or interact with humans. Research has far advanced for this cause, and Deep learning is at its heart. This paper systematically discusses state-of-the-art deep learning architectures and algorithms for facial emotion detection and recognition. The paper also reveals the dominance of CNN architectures over other known architectures like RNNs and SVMs, highlighting the contributions, model performance, and limitations of the reviewed state-of-the-art. It further identifies available opportunities and open issues worth considering by various FER research in the future. This paper will also discover how computation power and availability of large facial emotion datasets have also limited the pace of progress.
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深度学习算法在面部情绪检测与识别中的研究进展
面部情感识别(FER)是情感计算的一部分,在情感计算中,计算机被训练从人类的表情中识别人类的情感。面部表情识别对于弥合人与计算机之间的沟通鸿沟是非常必要的,因为面部表情是一种交流形式,在整个面对面的交流频谱中,它传递了一个人55%的情绪和精神状态。这一领域的突破也使计算机系统(机器人系统)更好地服务于人类或与人类互动。这方面的研究已经取得了很大进展,而深度学习是其核心。本文系统地讨论了用于面部情感检测和识别的最新深度学习架构和算法。本文还揭示了CNN架构相对于其他已知架构(如rnn和svm)的主导地位,强调了所审查的最新技术的贡献、模型性能和局限性。它进一步确定了未来各种FER研究值得考虑的可用机会和开放问题。本文还将发现大型面部情绪数据集的计算能力和可用性如何限制了进展的速度。
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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审稿时长
10 weeks
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