Itir Onal Ertugrul, Le Yang, László A Jeni, Jeffrey F Cohn
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引用次数: 0
Abstract
Facial action units (AUs) relate to specific local facial regions. Recent efforts in automated AU detection have focused on learning the facial patch representations to detect specific AUs. These efforts have encountered three hurdles. First, they implicitly assume that facial patches are robust to head rotation; yet non-frontal rotation is common. Second, mappings between AUs and patches are defined a priori, which ignores co-occurrences among AUs. And third, the dynamics of AUs are either ignored or modeled sequentially rather than simultaneously as in human perception. Inspired by recent advances in human perception, we propose a dynamic patch-attentive deep network, called D-PAttNet, for AU detection that (i) controls for 3D head and face rotation, (ii) learns mappings of patches to AUs, and (iii) models spatiotemporal dynamics. D-PAttNet approach significantly improves upon existing state of the art.
面部动作单元(AU)与特定的局部面部区域有关。最近在自动 AU 检测方面所做的努力主要集中在学习面部斑块表征以检测特定的 AU。这些努力遇到了三个障碍。首先,它们隐含地假定面部补丁对头部旋转具有鲁棒性;然而非正面旋转是很常见的。其次,AU 和斑块之间的映射是先验定义的,忽略了 AU 之间的共现。第三,AUs 的动态要么被忽略,要么被顺序建模,而不是像人类感知那样同时建模。受人类感知领域最新进展的启发,我们提出了一种动态斑块注意力深度网络(称为 D-PAttNet),用于 AU 检测,该网络(i)控制三维头部和面部旋转,(ii)学习斑块到 AU 的映射,(iii)建立时空动态模型。D-PAttNet 方法大大改进了现有的技术水平。