使用混合深度学习模型从面部图像中识别情绪

Arfa Fatima Yaseen, A. Shaukat, Maria Alam
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引用次数: 4

摘要

随着机器人的进步和它们在日常琐事中的同化,保持它们与人类之间有效的沟通模式变得至关重要,这反过来又需要开发高度智能的系统,使机器人能够感知并相应地适应行为。机器对人类真实情感的识别及其准确解释对计算机视觉界提出了巨大的挑战,为了提高机器的自适应能力,人们提出了各种深度学习卷积神经网络(CNN)算法来实现这一目标。但随着面部表情识别技术(FERs)在许多社会垂直领域的应用,如健康、教育、营销、游戏、监控等。在所有场景下提供完美识别的单一算法迄今尚未建立;然而,开发替代或新模型以改进识别过程的研究仍在进行中。本文利用深度学习算法对人类面部表情进行分类。使用了两个面部表情图像的基准数据集。该方法利用多个模型考察了DCNN的有效性。高效率netb0、DenseNet169和高效率netb0 +VGG16的组合模型已被提出用于我们的工作。混合模型在FER2013和JAFFE数据集上的识别准确率分别达到90.6%和95.6%。与先前在两个数据集上报道的文献结果相比,所获得的识别率具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emotion Recognition from Facial Images using Hybrid Deep Learning Models
With the advancement of robots and their assimilation in daily chores, it has become essential to maintain an effective mode of communication between them and humans, that in turn requires development of highly intelligent systems so that robot can sense and adapt the behavior accordingly. The recognition of actual human emotion and its exact interpretation by the machines poses a great challenge to computer vision community, and in quest to improve the adaptivity of machines, a variety of deep learning convolutional neural network (CNN) algorithms have been proposed to serve the purpose. But as Facial Expression Recognition’s (FERs) have found their applications in a number of society verticals like health, education, marketing, gaming, surveillance etc. The single algorithm to provide perfect recognition in all the scenarios has never been established so far; however, the research is still in progress to develop the substitutes or new models to improve the recognition process. In this paper, deep learning algorithms have been utilized for classifying the facial expression of the humans.Two benchmark datasets of facial expression images have been used. The proffered method investigated the effectiveness of DCNN with the help of multiple models. EfficientNetB0, DenseNet169 and a combined model of EfficientNetB0+VGG16 have been proposed to be used in our work.With the hybrid model, we have achieved recognition accuracy of 90.6% and 95.6% on FER2013 and JAFFE datasets respectively. The recognition rates achieved are competitive as compared to previous reported results in literature on the two datasets.
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