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Context-Aware Feature and Label Fusion for Facial Action Unit Intensity Estimation With Partially Labeled Data

机译:带有上下文感知的特征和标签融合,用于带有部分标签数据的面部动作单元强度估计

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Facial action unit (AU) intensity estimation is a fundamental task for facial behaviour analysis. Most previous methods use a whole face image as input for intensity prediction. Considering that AUs are defined according to their corresponding local appearance, a few patch-based methods utilize image features of local patches. However, fusion of local features is always performed via straightforward feature concatenation or summation. Besides, these methods require fully annotated databases for model learning, which is expensive to acquire. In this paper, we propose a novel weakly supervised patch-based deep model on basis of two types of attention mechanisms for joint intensity estimation of multiple AUs. The model consists of a feature fusion module and a label fusion module. And we augment attention mechanisms of these two modules with a learnable task-related context, as one patch may play different roles in analyzing different AUs and each AU has its own temporal evolution rule. The context-aware feature fusion module is used to capture spatial relationships among local patches while the context-aware label fusion module is used to capture the temporal dynamics of AUs. The latter enables the model to be trained on a partially annotated database. Experimental evaluations on two benchmark expression databases demonstrate the superior performance of the proposed method.
机译:面部动作单位(AU)强度估计是面部行为分析的基本任务。以前的大多数方法都将整个面部图像用作强度预测的输入。考虑到AU是根据其对应的局部外观定义的,因此一些基于补丁的方法利用了局部补丁的图像特征。但是,局部特征的融合总是通过简单的特征级联或求和来执行的。此外,这些方法需要完全注释的数据库来进行模型学习,这很昂贵。在本文中,我们基于两种注意力机制对多个AU进行联合强度估计,提出了一种基于弱监督的基于补丁的深度模型。该模型由特征融合模块和标签融合模块组成。并且,我们通过可学习的与任务相关的上下文来增强这两个模块的注意力机制,因为一个补丁在分析不同的AU时可能扮演不同的角色,并且每个AU都有自己的时间演化规则。上下文感知特征融合模块用于捕获局部补丁之间的空间关系,而上下文感知标签融合模块用于捕获AU的时间动态。后者使模型能够在部分注释的数据库上训练。在两个基准表达数据库上的实验评估证明了该方法的优越性能。

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