多视角面部表情识别的局部优势二值模式

Bikash Santra, D. Mukherjee
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引用次数: 6

摘要

本文提出了一种新的面部表情自动识别框架。然而,所提出问题的人脸图像是在多个视角下捕获的(即多视角面部表情)。该方案引入了一种局部优势二进制模式(LDBP)。与基于均匀LBP的特征不同,LDBP使用更少的特征维数而不影响识别性能。LDBP的计算方法是利用邻域像素的优势方向随机生成LBP。面部表情图像结构张量表示的特征值分析决定了像素局部邻域灰度值变化的主导方向。我们使用SVM对多视图面部表情进行特定视图分类。该模型在近正面(CK+和JAFEE)和多视角(KDEF, SFEW和LFPW)人脸图像的基准数据集上进行了实验。这些数据集包括来自摆姿势和自然表情的人脸。所提出的方案在近正面面部表情和多视角面部表情的平均表现上比目前的技术水平高出约1%和至少3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local dominant binary patterns for recognition of multi-view facial expressions
In this paper, a novel framework is proposed for automatic recognition of facial expressions. However, the face images for the proposed problem are captured at multiple view angle (i.e., multi-view facial expressions). The proposed scheme introduces a local dominant binary pattern (LDBP). Unlike uniform LBP based features, the LDBP uses fewer feature dimension without affecting the recognition performances. The LDBP is computed by improvising LBP with dominant orientations of neighborhood pixels. The eigen-value analysis of structure tensor representation of expressive face images determines the dominant directions of gray value changes in local neighbors of pixels. We use SVM for view-specific classification of multi-view facial expressions. The proposed model is experimented with the benchmark datasets of both near-frontal (CK+ and JAFEE) and multi-view (KDEF, SFEW and LFPW) face images. The datasets include faces from posed as well as spontaneous expressions. The proposed scheme outperforms state-of-the-arts by approximately 1% for the near-frontal facial expressions and by at least 3% for multi-view facial expressions on an average.
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