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AU (Action Unit) detection based on BEGAN data augmentation

机译:AU(动作单位)基于开始数据增强检测

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摘要

Limited annotated training data is a challenging problem in Action Unit detection. Particularly, for micro-expression AU detection, more training data can help improve the performance of detection. For the purpose of data augmentation, this paper put to use the generative adversarial networks (GAN) which is able to generate High-quality pictures that as a supplementary to our limited database. In addition, we propose a sample and effective model for facial micro-expression action units (AU) detection based on 3D-CNNs and Gated Recurrent Unit (GRU) network. The network is composed of 6 layers including 3 convolutional layers, correspondingly, each convolution layer is followed by a pooling layer, and a single layer GRU unit with 15 hidden nodes. For the task of recognizing AUs, we have trained a network for the DISFA datasets, where the GAN applied on, so as to take full advantage of AU-tagged databases and enable the network convergence faster and easier. We show that our model and the method supplying labeled-AU database achieve competitive performance compared with state-of-the-art deep learning methods and traditional data expansion methods such as rotate angles and increase noise based on original drawings.
机译:有限的注释培训数据在行动单元检测中是一个具有挑战性的问题。特别是,对于微表达式Au检测,更多的训练数据可以有助于提高检测的性能。出于数据增强的目的,本文旨在使用生成的对抗性网络(GAN),该网络能够生成作为对我们有限数据库的补充的高质量照片。此外,我们提出了基于3D-CNN和门控复发单元(GRU)网络的面部微表达动作单元(AU)检测的样本和有效模型。该网络由6层组成,包括3个卷积层,相应地,每个卷积层之后是池层,以及具有15个隐藏节点的单层GRU单元。对于识别AU的任务,我们已经训练了一个网络的网络,其中GAN应用于AU标记的数据库,并使网络融合更快更容易。我们展示了我们的模型和提供标签-AU数据库的方法实现了竞争性能,与最先进的深度学习方法和传统的数据扩展方法,如旋转角度和基于原始图纸的增加噪声。

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