Deep Learning Framework for Facial Emotion Recognition using CNN Architectures

Rohan Appasaheb Borgalli, Sunil Surve
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引用次数: 3

Abstract

FER (facial expression recognition) is a significant study subject in the artificial intelligence and computer vision areas because of its widespread applicability in both academic and industrial sectors. Though FER can be carried out primarily utilizing multiple sensors, research shows that using facial images/videos for recognition of facial expression is better because visual expressions carry major information through which emotions can be conveyed.In the past, much research was conducted in the field of FER using different approaches such as the use of different sensors, machine learning, and deep learning framework with dynamic sequences and static images. The most recent state-of-the-art outcomes demonstrate In comparison to conventional FER techniques, deep learning Convolutional Neural Network (CNN) based systems are significantly more powerful. Deep learning-based FER methods utilizing deep networks enable extraction of features automatically instead of traditionally handcrafted feature extraction.This paper focuses on implementing different custom and standard CNN architectures for training and testing them on facial expression static image datasets scenario KDEF, RAFD, RAF-DB, SFEW, and AMFED+, both lab-controlled and wild.
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使用CNN架构的面部情感识别深度学习框架
面部表情识别因其在学术和工业领域的广泛适用性而成为人工智能和计算机视觉领域的重要研究课题。虽然FER主要可以利用多个传感器进行,但研究表明,使用面部图像/视频进行面部表情识别效果更好,因为视觉表情携带着可以传达情绪的主要信息。过去,在FER领域进行了许多研究,使用不同的方法,如使用不同的传感器,机器学习和深度学习框架,使用动态序列和静态图像。最新的研究结果表明,与传统的FER技术相比,基于深度学习卷积神经网络(CNN)的系统明显更强大。基于深度学习的FER方法利用深度网络实现了特征的自动提取,而不是传统的手工特征提取。本文的重点是实现不同的定制和标准CNN架构,用于在面部表情静态图像数据集场景KDEF, RAFD, RAF-DB, SFEW和AMFED+上进行训练和测试,包括实验室控制和野生。
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