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Learning combined features for automatic facial expression recognition

机译:学习自动面部表情识别的组合特征

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摘要

Facial expressions are one of the most natural and powerful means for the human being in his social communications, whether to share his internal emotional states or to display his moods or intentions, which, in fact, may be true or simply played in a theatrical way. Given the numerous and variety of applications that can be easily planned, building a system able to automatically recognising facial expressions from images has been an intense field of study in recent years. In this paper, we propose a new framework for automatic facial expression recognition based on combined features and deep learning method. Before the feature extraction, we use Haar feature-based cascade classifier in order to detect then crop the face in the images. Next, we extract pyramid of histogram of gradients (PHOG) as shape descriptors and local binary patterns (LBP) as appearance features to form hybrid feature vectors. Finally, we use those vectors for training deep learning algorithm called deep belief network (DBN). The experimental results on publicly available datasets show promising accuracy in recognising all expression classes, even for experiments which are evaluated on more than seven basic expressions.
机译:面部表情是人类在社交沟通中最自然和最强大的手段之一,是否分享他的内部情绪状态或展示他的情绪或意图,其实可能是真实的或只是以戏剧的方式播放。鉴于可以轻易计划的许多应用程序,建立一个能够自动识别图像的面部表达的系统是近年来一直是一个激烈的研究领域。在本文中,我们提出了一种基于组合特征和深度学习方法的自动面部表情识别的新框架。在特征提取之前,我们使用基于HAAR功能的级联分类器来检测图像中的脸部。接下来,我们将梯度(PHOG)直方图的金字塔作为形状描述符和本地二进制模式(LBP)作为外观特征来提取为形状描述函数,以形成混合特征向量。最后,我们使用这些向量培训被称为深度信仰网络(DBN)的深度学习算法。公开数据集的实验结果表明了在识别所有表达类中的有希望的准确性,即使对于评估超过七个基本表达式的实验。

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