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Multi-view common component discriminant analysis for cross-view classification

机译:用于跨视图分类的多视图共同组件判别分析

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摘要

Cross-view classification that means to classify samples from heterogeneous views is a significant yet challenging problem in computer vision. An effective solution to this problem is the multi-view sub-space learning (MvSL), which intends to find a common subspace for multi-view data. Although great progress has been made, existing methods usually fail to find a suitable subspace when multi-view data lies on nonlinear manifolds, thus leading to performance deterioration. To circumvent this drawback, we propose Multi-view Common Component Discriminant Analysis (MvCCDA) to handle view discrepancy, discriminability and nonlinearity in a joint manner. Specifically, our MvCCDA incorporates supervised information and local geometric information into the common component extraction process to learn a discriminant common subspace and to discover the nonlinear structure embedded in multi-view data. Optimization and complexity analysis of MvCCDA are also presented for completeness. Our MvCCDA is competitive with the state-of-the-art MvSL based methods on four benchmark datasets, demonstrating its superiority. (C) 2019 Elsevier Ltd. All rights reserved.
机译:巧克力视图分类,意味着从异质视图中分类样本是计算机视觉中的一个重要而挑战性的问题。对此问题的有效解决方案是多视图子空间学习(MVSL),其打算找到多视图数据的常见子空间。虽然已经取得了很大进展,但当多视图数据位于非线性歧管上时,现有方法通常无法找到合适的子空间,从而导致性能恶化。为了避免这种缺点,我们提出了多视图共同组分判别分析(MVCCDA)以以关节方式处理视图差异,辨别性和非线性。具体而言,我们的MVCCDA将监督信息和本地几何信息包含到公共组件提取过程中以学习判别常见的常见子空间,并发现嵌入在多视图数据中的非线性结构。还介绍了MVCCDA的优化和复杂性分析以进行完整性。我们的MVCCDA对四个基准数据集的基于最先进的MVSL方法具有竞争力,展示了其优越性。 (c)2019年elestvier有限公司保留所有权利。

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