通过深度学习技术进行高效面部情绪检测

Q4 Mathematics
Priti Singh, Hari Om, C. S. Raghuvanshi
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引用次数: 0

摘要

智能面部情绪检测是一个引人入胜的研究领域,已在国防、医疗保健和人机界面等多个领域得到应用。研究人员正在努力探索对面部线索进行编码、解码甚至混淆的方法,以完善算法预测。利用深度学习算法与认知物联网(CIoT)的结合,人们正在努力提高效率,以应对该技术的快速发展。本研究旨在利用深度学习算法提炼智能面部表情识别的最新进展,同时开创情绪检测的新方法。物联网的蓬勃发展凸显了当前自动化智能服务技术基础设施的不足,使其无法满足工业需求。为智能环境量身定制的物联网技术的逐步增强无意中导致了延误和市场效率的降低。深度学习是无数应用和实验装置的基石。要应对这一挑战,就必须在深度学习框架内制定情感智能方法,从而为物联网计划注入活力,最近在面部情感检测应用方面取得的进展就阐明了这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Facial Emotion Detection through Deep Learning Techniques
Smart facial emotion detection represents a captivating realm of inquiry that has found applications across diverse sectors such as defense, healthcare, and human-machine interfaces. Researchers are diligently exploring methods to encode, decode, and even obfuscate facial cues to refine algorithmic predictions. Leveraging a combination of deep learning algorithms and Cognitive Internet of Things (CIoT), efforts are underway to bolster efficiency in response to the rapid evolution of this technology. This study aims to distill recent advancements in smart facial expression recognition utilizing deep learning algorithms while pioneering novel approaches to emotion detection. The burgeoning Internet of Things landscape has underscored a deficiency in technological infrastructure within current automated intelligent services, rendering them ill-equipped to cater to industrial demands. The gradual augmentation of Internet of Things technologies tailored for intelligent environments has inadvertently led to delays and diminished market efficacy. Deep learning stands out as a cornerstone in myriad applications and experimental setups. Addressing this challenge necessitates the formulation of emotionally intelligent methodologies within the framework of deep learning, thereby invigorating Internet of Things initiatives, as elucidated by recent strides in facial emotion detection applications.
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CiteScore
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