基于深度学习和迁移学习的微表情识别的比较分析

Rahil Kadakia, Parth Kalkotwar, Pruthav Jhaveri, Rahul Patanwadia, Kriti Srivastava
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引用次数: 2

摘要

微表情是面部肌肉因受到刺激而产生的不自觉的肌肉运动。它们是短暂的表情,持续时间在0.04到0.2秒之间,振幅非常微妙。鉴于这些表情的短暂和难以捉摸的性质,用肉眼几乎不可能发现它们。深度学习模型的最新发展在有效识别和分析微表情方面取得了巨大成功。本文在SAMM数据集上实现了各种模型。研究的模型分别是VGG16、ResNet50、MobileNet、InceptionV3和Xception。实验结果帮助我们仔细分析了与模型相关的各种度量,并将它们相互比较,以确定哪一个优于其他,并且最适合实际应用程序。MobileNet模型在本文研究领域的效率方面已经超越了所有其他模型。它已经能够描述和理解各种微表情中的所有信息。
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Comparative Analysis of Micro Expression Recognition using Deep Learning and Transfer Learning
Micro Expressions are those involuntary muscular movements of the facial muscles produced in response to a stimulus. They are short-lived expressions that last for anywhere between 0.04 to 0.2 seconds and are extremely subtle in their amplitude. Given their fleeting and elusive nature, it becomes almost impossible to detect these expressions through the naked eye. Recent developments in Deep Learning models have shown great success in efficiently identifying and analyzing Micro Expressions. In this paper, various models have been implemented on the SAMM dataset. The models studied are namely– VGG16, ResNet50, MobileNet, InceptionV3, and Xception. The experimental results have helped us carefully analyze the various metrics related to the models and compare them with each other to ascertain which one outperformed the others and is best suited for real-world applications. The MobileNet model has surpassed all other models in terms of its efficiency with respect to the domain of this paper. It has been able to describe and understand all the information that can be found in the various Micro Expressions.
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