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Facial expression recognition with convolutional neural networks via a new face cropping and rotation strategy

机译:通过新的面部裁剪和旋转策略使用卷积神经网络进行面部表情识别

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摘要

With the recent development and application of human-computer interaction systems, facial expression recognition (FER) has become a popular research area. The recognition of facial expression is a difficult problem for existing machine learning and deep learning models because that the images can vary in brightness, background, pose, etc. Deep learning methods also require the support of big data. It does not perform well when the database is small. Feature extraction is very important for FER, even a simple algorithm can be very effective if the extracted features are sufficient to be separable. However, deep learning methods automatically extract features so that some useless features can interfere with useful features. For these reasons, FER is still a challenging problem in computer vision. In this paper, with the aim of coping with few data and extracting only useful features from image, we propose new face cropping and rotation strategies and simplification of the convolutional neural network (CNN) to make data more abundant and only useful facial features can be extracted. Experiments to evaluate the proposed method were performed on the CK+ and JAFFE databases. High average recognition accuracies of 97.38% and 97.18% were obtained for 7-class experiments on the CK+ and JAFFE databases, respectively. A study of the impact of each proposed data processing method and CNN simplification is also presented. The proposed method is competitive with existing methods in terms of training time, testing time, and recognition accuracy.
机译:随着人机交互系统的最新发展和应用,面部表情识别(FER)已成为流行的研究领域。对于现有的机器学习和深度学习模型而言,面部表情的识别是一个难题,因为图像的亮度,背景,姿势等可能会有所不同。深度学习方法也需要大数据的支持。当数据库较小时,它不能很好地执行。特征提取对于FER非常重要,如果提取的特征足以可分离,那么即使是简单的算法也可以非常有效。但是,深度学习方法会自动提取特征,以便某些无用的特征会干扰有用的特征。由于这些原因,FER在计算机视觉中仍然是一个具有挑战性的问题。在本文中,为了处理很少的数据并仅从图像中提取有用的特征,我们提出了新的人脸裁剪和旋转策略以及卷积神经网络(CNN)的简化,以使数据更加丰富,只有有用的人脸特征才能提取。在CK +和JAFFE数据库上进行了评估该建议方法的实验。在CK +和JAFFE数据库上进行7类实验,分别获得了97.38%和97.18%的高平均识别精度。还介绍了每种建议的数据处理方法和CNN简化的影响的研究。在训练时间,测试时间和识别准确性方面,所提出的方法与现有方法竞争。

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