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Facial Expression Recognition Based on Multi-scale CNNs

机译:基于多尺度CNN的面部表情识别

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This paper proposes a new method for facial expression recognition, called multi-scale CNNs. It consists several sub-CNNs with different scales of input images. The sub-CNNs of multi-scale CNNs are benefited from various scaled input images to learn the optimalized parameters. After trained all these sub-CNNs separately, we can predict the facial expression of an image by extracting its features from the last fully connected layer of sub-CNNs in different scales and mapping the averaged features to the final classification probability. Multi-scale CNNs can classify facial expression more accurately than any single scale sub-CNN. On Facial Expression Recognition 2013 database, multi-scale CNNs achieved an accuracy of 71.80% on the testing set, which is comparative to other state-of-the-art methods.
机译:本文提出了一种新的面部表情识别方法,称为多尺度CNN。它由具有不同输入图像的不同尺度的若干子CNN组成。多尺度CNN的子CNN受益于各种缩放的输入图像以学习最高级的参数。在分别训练所有这些子CNN之后,我们可以通过在不同的尺度中从最后一个完全连接的子CNN层中提取其特征来预测图像的面部表情并将平均特征映射到最终分类概率。多尺寸CNN可以比任何单个刻度子CNN更准确地对面部表情进行分类。在面部表情识别2013数据库中,多尺度CNNS在测试组上实现了71.80%的准确性,这与其他最先进的方法相比。

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