利用深度学习实时识别面部表情的先进技术

Bhoomika J, Nagesh B S
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引用次数: 0

摘要

摘要--开发能从面部表情自动识别和解读人类情绪的系统,是面部情绪识别和检测研究领域迅速扩展的目标。这项技术的应用领域十分广泛,包括医疗保健、市场营销、安全和人机界面等。利用计算机视觉和机器学习算法,面部情绪识别系统可以分析人脸特征,并将其分为多种情绪类别,包括喜悦、悲伤、愤怒、恐惧和惊讶。得益于深度学习技术的最新进展,面部情绪检测系统现在可以高弹性、高精度地识别情绪。此外,实时人脸表情识别系统的开发为情感分析、情感智能和情感计算等应用开辟了新途径。这项技术将从根本上改变人机交互,并为建立更具同情心和个性化的关系开辟道路。包括虚拟助手、心理健康辅助工具和以人为本的技术在内的多种应用都将受到面部表情识别和保护系统开发的巨大影响。能够识别情绪的人工智能(AI)技术可以让人们以更智能、更灵活的方式与数字世界互动。但情绪识别的复杂性在于,除了面部表情之外,它还需要语境和几何元素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced Techniques for Real-time Facial Expression Recognition Using Deep Learning
Abstract—Developing systems that can automatically recognize and interpret human emotions from facial expressions is the aim of the quickly expanding field of facial emotion identification and detection research. This technology finds applications in a wide range of areas, including as healthcare, marketing, security, and human-computer interface. Using computer vision and machine learning algorithms, facial emotion recognition systems analyze a face’s features and classify it into numerous emotional categories, including joyful, sorrowful, angry, fearful, and surprised.The three steps in the multi-step process that goes into identifying facial emotions are face detection, facial feature extraction, and emotion categorization. Thanks to recent advances in deep learn- ing, facial emotion detection systems can now identify emotions with high resilience and precision. Further, the development of real-time face expression recognition systems has opened up new avenues for applications such as sentiment analysis, emotional intelligence, and affective computing. This technology could fundamentally alter human-machine interactions and open the way to more compassionate and personalized relationships.A multitude of applications, including virtual assistants, mental health aids, and human-centered technology, will be greatly impacted by the development of systems for identifying and de- tecting facial expressions. Artificial intelligence (AI) technologies that recognize emotions allow people to interact with the digital world in more intelligent and flexible ways. But the complexity of emotion identification lies in the fact that it requires context and geometric elements in addition to facial expressions.
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