使用深度学习的面部表情识别

H. Shehu, Md. Haidar Sharif, S. Uyaver
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引用次数: 4

摘要

近年来,面部表情识别已成为一个日益重要的研究领域。基于神经网络的方法在执行基于识别的任务,赢得各种数据科学社区设立的比赛以及在许多数据集上实现高性能方面取得了惊人的进展。各种各样的正则化方法已经被各种各样的研究人员用来帮助对抗过度拟合,减少训练时间,并推广他们的模型。在本文中,通过应用Haar级联分类器来裁剪人脸并聚焦于感兴趣的区域,我们假设我们可以在不使用整个图像来分析面部表情的情况下实现快速收敛。我们还应用了标签平滑,并分析了其对CK+、KDEF和RAF数据库的影响。本文以ResNet模型作为神经网络模型的一个例子。考虑到CK+和KDEF数据库,标签平滑已经证明识别精度提高了0.5%。虽然Haar Cascade的应用已经显示出在KDEF和RAF数据库上以很小的余量降低了达到的精度,但已经观察到模型的快速收敛。
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Facial expression recognition using deep learning
Facial expression recognition has become an increasingly important area of research in recent years. Neural network- based methods have made amazing progress in performing recognition-based tasks, winning competitions set up by various data science communities, and achieving high performance on many datasets. Miscellaneous regularization methods have been utilized by various researchers to help combat over-fitting, to reduce training time, and to generalize their models. In this paper, by applying the Haar Cascade classifier to crop faces and focus on the region of interest, we hypothesize that we would attain a fast convergence without using the whole image to analyze facial expressions. We also apply label smoothing and analyze its effect on the databases of CK+, KDEF, and RAF. The ResNet model has been employed as an example of a neural network model. Label smoothing has demonstrated an improvement of the recognition accuracy up to 0.5% considering CK+ and the KDEF databases. While the application of Haar Cascade has shown to decrease the achieved accuracy on KDEF and RAF databases with a small margin, fast convergence of the model has been observed.
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Facial expression recognition using deep learning Preface: Fourth International Conference of Mathematical Sciences (ICMS 2020) Maltepe University, Istanbul-Turkey On G-continuity in neutrosophic topological spaces A look on separation axioms in neutrosophic topological spaces Conference Details: Fourth International Conference of Mathematical Sciences (ICMS 2020) Maltepe University, Istanbul-Turkey
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