Chen Xi'ai, Han Zhi, Wang Yao, Zhao Qian, Meng Deyu, Lin Lin, Tang Yandong
IEEE Trans Neural Netw Learn Syst. 2018 Nov;29(11):5380-5393. doi: 10.1109/TNNLS.2018.2796606. Epub 2018 Mar 1.
The low-rank tensor factorization (LRTF) technique has received increasing attention in many computer vision applications. Compared with the traditional matrix factorization technique, it can better preserve the intrinsic structure information and thus has a better low-dimensional subspace recovery performance. Basically, the desired low-rank tensor is recovered by minimizing the least square loss between the input data and its factorized representation. Since the least square loss is most optimal when the noise follows a Gaussian distribution, -norm-based methods are designed to deal with outliers. Unfortunately, they may lose their effectiveness when dealing with real data, which are often contaminated by complex noise. In this paper, we consider integrating the noise modeling technique into a generalized weighted LRTF (GWLRTF) procedure. This procedure treats the original issue as an LRTF problem and models the noise using a mixture of Gaussians (MoG), a procedure called MoG GWLRTF. To extend the applicability of the model, two typical tensor factorization operations, i.e., CANDECOMP/PARAFAC factorization and Tucker factorization, are incorporated into the LRTF procedure. Its parameters are updated under the expectation-maximization framework. Extensive experiments indicate the respective advantages of these two versions of MoG GWLRTF in various applications and also demonstrate their effectiveness compared with other competing methods.
低秩张量分解(LRTF)技术在许多计算机视觉应用中受到越来越多的关注。与传统的矩阵分解技术相比,它能够更好地保留内在结构信息,因此具有更好的低维子空间恢复性能。基本上,通过最小化输入数据与其分解表示之间的最小二乘损失来恢复所需的低秩张量。由于当噪声服从高斯分布时最小二乘损失是最优化的,基于 -范数的方法被设计用于处理离群值。不幸的是,当处理实际数据时它们可能会失去有效性,实际数据常常被复杂噪声所污染。在本文中,我们考虑将噪声建模技术集成到广义加权LRTF(GWLRTF)过程中。该过程将原始问题视为一个LRTF问题,并使用高斯混合模型(MoG)对噪声进行建模,这一过程称为MoG GWLRTF。为了扩展模型的适用性,将两种典型的张量分解操作,即CANDECOMP/PARAFAC分解和Tucker分解,纳入到LRTF过程中。其参数在期望最大化框架下进行更新。大量实验表明了这两个版本的MoG GWLRTF在各种应用中的各自优势,并且也证明了它们与其他竞争方法相比的有效性。