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Deep Neural Networks with Relativity Learning for facial expression recognition

机译:具有相对论学习面部表情识别的深神经网络

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Facial expression recognition aims to classify facial expression as one of seven basic emotions including “neutral”. This is a difficult problem due to the complexity and subtlety of human facial expressions, but the technique is needed in important applications such as social interaction research. Deep learning methods have achieved state-of-the-art performance in many tasks including face recognition and person re-identification. Here we present a deep learning method termed Deep Neural Networks with Relativity Learning (DNNRL), which directly learns a mapping from original images to a Euclidean space, where relative distances correspond to a measure of facial expression similarity. DNNRL updates the model parameters according to sample importance. This strategy results in an adjustable and robust model. Experiments on two representative facial expression datasets (FER-2013 and SFEW 2.0) are performed to demonstrate the robustness and effectiveness of DNNRL.
机译:面部表情识别旨在将面部表情分类为七种基本情绪之一,包括“中性”。这是由于人类面部表情的复杂性和微妙的难题,但是在社会互动研究等重要应用中需要该技术。深入学习方法在许多任务中取得了最先进的表现,包括面部识别和人员重新识别。在这里,我们提出了一种具有相对学习(DNNRL)的深度神经网络被称为深度神经网络的深度学习方法,其直接从原始图像到欧几里德空间的映射,其中相对距离对应于面部表情相似度的度量。 DNNRL根据样本重要性更新模型参数。该策略导致可调和鲁棒的模型。进行两种代表性面部表情数据集(FER-2013和SFew 2.0)的实验,以证明DNNRL的稳健性和有效性。

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