Fully automatic 3D facial expression recognition using local depth features

Mingliang Xue, A. Mian, Wanquan Liu, Ling Li
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引用次数: 14

Abstract

Facial expressions form a significant part of our nonverbal communications and understanding them is essential for effective human computer interaction. Due to the diversity of facial geometry and expressions, automatic expression recognition is a challenging task. This paper deals with the problem of person-independent facial expression recognition from a single 3D scan. We consider only the 3D shape because facial expressions are mostly encoded in facial geometry deformations rather than textures. Unlike the majority of existing works, our method is fully automatic including the detection of landmarks. We detect the four eye corners and nose tip in real time on the depth image and its gradients using Haar-like features and AdaBoost classifier. From these five points, another 25 heuristic points are defined to extract local depth features for representing facial expressions. The depth features are projected to a lower dimensional linear subspace where feature selection is performed by maximizing their relevance and minimizing their redundancy. The selected features are then used to train a multi-class SVM for the final classification. Experiments on the benchmark BU-3DFE database show that the proposed method outperforms existing automatic techniques, and is comparable even to the approaches using manual landmarks.
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使用局部深度特征的全自动3D面部表情识别
面部表情是我们非语言交流的重要组成部分,理解它们对于有效的人机交互至关重要。由于面部几何形状和表情的多样性,自动表情识别是一项具有挑战性的任务。本文研究了基于单次三维扫描的人脸独立识别问题。我们只考虑3D形状,因为面部表情主要编码在面部几何变形中,而不是纹理中。与大多数现有作品不同,我们的方法是全自动的,包括地标的检测。我们使用Haar-like feature和AdaBoost分类器在深度图像及其梯度上实时检测四个眼角和鼻尖。从这5个点中,定义另外25个启发式点来提取局部深度特征以表示面部表情。深度特征被投影到一个较低维的线性子空间中,在这个子空间中,特征选择通过最大化它们的相关性和最小化它们的冗余来完成。然后使用选择的特征来训练多类支持向量机以进行最终分类。在基准BU-3DFE数据库上的实验表明,该方法优于现有的自动标记技术,甚至可以与使用手动标记的方法相媲美。
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