Wang Ziqiang, Sun Xia, Sun Lijun, Huang Yuchun
School of Information Science and Engineering, Henan University of Technology, Zhengzhou 450001, China.
ScientificWorldJournal. 2014 Mar 9;2014:924090. doi: 10.1155/2014/924090. eCollection 2014.
In many image classification applications, it is common to extract multiple visual features from different views to describe an image. Since different visual features have their own specific statistical properties and discriminative powers for image classification, the conventional solution for multiple view data is to concatenate these feature vectors as a new feature vector. However, this simple concatenation strategy not only ignores the complementary nature of different views, but also ends up with "curse of dimensionality." To address this problem, we propose a novel multiview subspace learning algorithm in this paper, named multiview discriminative geometry preserving projection (MDGPP) for feature extraction and classification. MDGPP can not only preserve the intraclass geometry and interclass discrimination information under a single view, but also explore the complementary property of different views to obtain a low-dimensional optimal consensus embedding by using an alternating-optimization-based iterative algorithm. Experimental results on face recognition and facial expression recognition demonstrate the effectiveness of the proposed algorithm.
在许多图像分类应用中,从不同视角提取多个视觉特征来描述一幅图像是很常见的。由于不同的视觉特征对于图像分类具有各自特定的统计特性和判别能力,处理多视角数据的传统方法是将这些特征向量连接成一个新的特征向量。然而,这种简单的连接策略不仅忽略了不同视角的互补性,还会导致“维数灾难”。为了解决这个问题,我们在本文中提出了一种新颖的多视角子空间学习算法,称为多视角判别几何保持投影(MDGPP),用于特征提取和分类。MDGPP不仅可以在单个视角下保持类内几何结构和类间判别信息,还可以通过基于交替优化的迭代算法探索不同视角的互补特性,以获得低维最优一致嵌入。人脸识别和面部表情识别的实验结果证明了该算法的有效性。