Xu Dong, Yan Shuicheng
IEEE Trans Image Process. 2009 Jul;18(7):1671-6. doi: 10.1109/TIP.2009.2018015. Epub 2009 May 12.
Recent research has demonstrated the success of tensor based subspace learning in both unsupervised and supervised configurations (e.g., 2-D PCA, 2-D LDA, and DATER). In this correspondence, we present a new semi-supervised subspace learning algorithm by integrating the tensor representation and the complementary information conveyed by unlabeled data. Conventional semi-supervised algorithms mostly impose a regularization term based on the data representation in the original feature space. Instead, we utilize graph Laplacian regularization based on the low-dimensional feature space. An iterative algorithm, referred to as adaptive regularization based semi-supervised discriminant analysis with tensor representation (ARSDA/T), is also developed to compute the solution. In addition to handling tensor data, a vector-based variant (ARSDA/V) is also presented, in which the tensor data are converted into vectors before subspace learning. Comprehensive experiments on the CMU PIE and YALE-B databases demonstrate that ARSDA/T brings significant improvement in face recognition accuracy over both conventional supervised and semi-supervised subspace learning algorithms.
最近的研究表明,基于张量的子空间学习在无监督和有监督配置中均取得了成功(例如,二维主成分分析、二维线性判别分析和判别式自编码器)。在本通信中,我们通过整合张量表示和未标记数据所传达的互补信息,提出了一种新的半监督子空间学习算法。传统的半监督算法大多基于原始特征空间中的数据表示施加正则化项。相反,我们基于低维特征空间利用图拉普拉斯正则化。还开发了一种迭代算法,称为基于张量表示的自适应正则化半监督判别分析(ARSDA/T)来计算解。除了处理张量数据外,还提出了一种基于向量的变体(ARSDA/V),其中在子空间学习之前将张量数据转换为向量。在CMU PIE和YALE-B数据库上进行的综合实验表明,与传统的有监督和半监督子空间学习算法相比,ARSDA/T在人脸识别准确率方面带来了显著提高。