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Learning Temporal Information From A Single Image For AU Detection

机译:从单个图像学习用于AU检测的时间信息

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Automatic Facial Action Units (AUs) detection is the recognition of the facial appearance changes caused by the contraction or relaxation of one or more related facial muscles. Compared to the sequence-based methods, a decreased performance is observed for the static image-based AU detection, due to the loss of temporal information. To solve this problem, we propose a novel method that implicitly learns temporal information from a single image for AU detection by adding a hidden optical-flow layer to concatenate two Convolutional Neural Networks (CNNs) models: optical-flow net (OF-Net) and AU detection net (AU-Net). The OF-Net is designed to estimate the facial appearance changes (optical flow) from a single input image through unsupervised learning. The AU-Net accepts the estimated optical-flow as input and predicts the AU occurrence. By training both OF-Net and AU-Net jointly, our model achieves better performance than training them separately, as the AU-Net provides semantic constraints for the optical-flow learning and helps generate more meaningful optical-flow. In return, the estimated optical-flow, which reflects facial appearance changes, benefits the AU-Net. Our proposed method has been evaluated on two benchmarks: BP4D and DISFA, and the experiments show significant performance improvement as compared to the state-of-the-art methods.
机译:自动面部动作单元(AUS)检测是识别由一个或多个相关面部肌肉的收缩或放松引起的面部外观变化。与基于序列的方法相比,由于丢失时间信息,观察到基于静态图像的AU检测的性能降低。为了解决这个问题,我们提出了一种新的方法,通过添加隐藏的光流层来连接两个卷积神经网络(CNNS)模型来隐式地从单个图像中隐式地学习AU检测的时间信息:光流网(网)和Au检测网(AU-Net)。网络旨在通过无监督学习来估计从单个输入图像的面部外观变化(光流量)。 AU-Net接受估计的光流作为输入并预测AU的发生。通过联合培训网和AU-Net,我们的模型比单独培训更好的性能,因为AU-Net为光学流动学习提供语义约束,并有助于产生更有意义的光流。作为返回,估计的光流,反映面部外观的变化,有益于AU-Net。我们提出的方法已经在两台基准中进行了评估:BP4D和DISFA,与最先进的方法相比,实验表现出显着的性能提升。

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