School of Electronic and Information Engineering, Hebei University of Technology, Tianjin 300401, China.
School of Artificial Intelligence, Hebei University of Technology, Tianjin 300401, China.
Sensors (Basel). 2020 Aug 8;20(16):4437. doi: 10.3390/s20164437.
As a spontaneous facial expression, a micro-expression can reveal the psychological responses of human beings. Thus, micro-expression recognition can be widely studied and applied for its potentiality in clinical diagnosis, psychological research, and security. However, micro-expression recognition is a formidable challenge due to the short-lived time frame and low-intensity of the facial actions. In this paper, a sparse spatiotemporal descriptor for micro-expression recognition is developed by using the Enhanced Local Cube Binary Pattern (Enhanced LCBP). The proposed Enhanced LCBP is composed of three complementary binary features containing Spatial Difference Local Cube Binary Patterns (Spatial Difference LCBP), Temporal Direction Local Cube Binary Patterns (Temporal Direction LCBP), and Temporal Gradient Local Cube Binary Patterns (Temporal Gradient LCBP). With the application of Enhanced LCBP, it would no longer be a problem to provide binary features with spatiotemporal domain complementarity to capture subtle facial changes. In addition, due to the redundant information existing among the division grids, which affects the ability of descriptors to distinguish micro-expressions, the Multi-Regional Joint Sparse Learning is designed to perform feature selection for the division grids, thus paying more attention to the critical local regions. Finally, the Multi-kernel Support Vector Machine (SVM) is employed to fuse the selected features for the final classification. The proposed method exhibits great advantage and achieves promising results on four spontaneous micro-expression datasets. Through further observation of parameter evaluation and confusion matrix, the sufficiency and effectiveness of the proposed method are proved.
作为一种自发的面部表情,微表情可以揭示人类的心理反应。因此,微表情识别因其在临床诊断、心理研究和安全方面的潜力而得到广泛研究和应用。然而,由于面部动作的持续时间短和强度低,微表情识别是一个具有挑战性的问题。本文提出了一种基于增强局部立方体二值模式(Enhanced LCBP)的微表情识别稀疏时空描述符。所提出的增强型 LCBP 由三个互补的二进制特征组成,包含空间差分局部立方体二值模式(Spatial Difference LCBP)、时间方向局部立方体二值模式(Temporal Direction LCBP)和时间梯度局部立方体二值模式(Temporal Gradient LCBP)。通过增强型 LCBP 的应用,提供具有时空域互补性的二进制特征来捕捉微妙的面部变化将不再是问题。此外,由于划分网格之间存在冗余信息,这会影响描述符区分微表情的能力,因此设计了多区域联合稀疏学习来对划分网格进行特征选择,从而更加关注关键的局部区域。最后,采用多核支持向量机(SVM)对选择的特征进行融合,进行最终分类。该方法在四个自发微表情数据集上表现出了很大的优势,取得了很好的结果。通过进一步观察参数评估和混淆矩阵,证明了该方法的充分性和有效性。