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Deep Learning for Illumination Invariant Facial Expression Recognition

机译:深度学习照明不变性面部表情识别

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In this work we propose a novel method to address illumination invariance for facial expression recognition. We propose a Deep Convolutional Network (CNN) pre-trained as a Deep Stacked Convolutional Autoencoder (SCAE) in a greedy layer-wise unsupervised fashion. The SCAE model learns to encode facial expression images and produce a feature vector with relatively similar illumination, regardless of the luminance level of the input image. Moreover, we propose fine-tuning the stacked shallow autoencoders after each one of these is trained greedily, rather than just at the end, and show that this approach significantly improves the set of illumination invariant features learnt by the SCAE. Finally, we propose the use of a variant rectifier linear unit transfer function that helps the SCAE model reduce or increase the illumination of images with high or low luminance, and show that the lower and upper bounds greatly influence classification performance. The method proposed provides an increase in classification accuracy of 4% on the KDEF dataset and 8% on the CK+ dataset.
机译:在这项工作中,我们提出了一种新的方法来解决面部表情识别的照明不变性。我们提出了一种深度卷积的网络(CNN),被预先训练为深层堆叠的卷积AutoEncoder(Scae),以贪婪的层智能监督的方式。 SCAE模型学习以编码面部表情图像并产生具有相对相似的照明的特征向量,无论输入图像的亮度水平如何。此外,我们提出了微调堆叠的浅宇期间,在这些培训之后贪婪地训练,而不是最后,并表明这种方法显着改善了Scae学到的一组照明不变特征。最后,我们提出了使用变型整流器线性单元传递函数,其有助于SCAE模型减少或增加具有高或低亮度图像的图像的照明,并显示下限和上限大大影响分类性能。该方法提出的方法在KDEF数据集中提供4%的分类精度,8%的CK + DataSet。

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