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Applying Delaunay Triangulation Augmentation for Deep Learning Facial Expression Generation and Recognition

机译:应用Delaunay三角测量增强深入学习面部表达生成和认可

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Generating and recognizing facial expressions has numerous applications, however, those are limited by the scarcity of datasets containing labeled nuanced expressions. In this paper, we describe the use of Delaunay triangulation combined with simple morphing techniques to blend images of faces, which allows us to create and automatically label facial expressions portraying controllable intensities of emotion. We have applied this approach on the RafD dataset consisting of 67 participants and 8 categorical emotions and evaluated the augmentation in a facial expression generation and recognition tasks using deep learning models. For the generation task, we used a deconvolution neural network which learns to encode the input images in a high-dimensional feature space and generate realistic expressions at varying intensities. The augmentation significantly improves the quality of images compared to previous comparable experiments and it allows to create images with a higher resolution. For the recognition task, we evaluated pre-trained Densenetl21 and Resnet50 networks with either the original or augmented dataset. Our results indicate that the augmentation alone has a similar or better performance compared to the original. Implications of this method and its role in improving existing facial expression generation and recognition approaches are discussed.
机译:生成和识别面部表情具有许多应用,然而,这些应用受到包含标记为细微表达的数据集的稀缺。在本文中,我们描述了Delaunay三角测量的使用结合了简单的变形技术来混合面部的图像,这使我们能够创建和自动标记描绘情感的可控强度的面部表达。我们在RAFD数据集中应用了这种方法,包括67名参与者和8个分类情绪,并在使用深度学习模型中评估面部表情生成和识别任务的增强。对于Generation Task,我们使用了一个Deconvolulate神经网络,该解码神经网络学习在高维特征空间中对输入图像进行编码并以不同的强度生成现实表达式。与先前的可比实验相比,增强显着提高了图像的质量,并且它允许创建具有更高分辨率的图像。对于识别任务,我们评估了具有原始或增强数据集的预先培训的DenSenetl21和Reset50网络。我们的结果表明,与原版相比,单独的增强具有类似或更好的性能。讨论了这种方法的影响及其在改善现有的面部表情和识别方法方面的作用。

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