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Tensor analysis with n-mode generalized difference subspace

机译:N模式广义差分子空间的张量分析

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摘要

The increasing use of multiple sensors, which produce a large amount of multi-dimensional data, requires efficient representation and classification methods. In this paper, we present a new method for multi-dimensional data classification that relies on two premises: (1) multi-dimensional data are usually represented by tensors, since this brings benefits from multilinear algebra and established tensor factorization methods; and (2) multilinear data can be described by a subspace of a vector space. The subspace representation has been employed for pattern-set recognition, and its tensor representation counterpart is also available in the literature. However, traditional methods do not use discriminative information of the tensors, degrading the classification accuracy. In this case, generalized difference subspace (GDS) provides an enhanced subspace representation by reducing data redundancy and revealing discriminative structures. Since GDS does not handle tensor data, we propose a new projection called n-mode GDS, which efficiently handles tensor data. We also introduce the n-mode Fisher score as a class separability index and an improved metric based on the geodesic distance for tensor data similarity. The experimental results on gesture and action recognition show that the proposed method outperforms methods commonly used in the literature without relying on pre-trained models or transfer learning.
机译:增加多个传感器的使用,它产生大量多维数据,需要有效的表示和分类方法。在本文中,我们提出了一种依赖于两个场所的多维数据分类的新方法:(1)多维数据通常由张量表示,因为这带来了来自多线性代数和建立的张量分解方法的益处; (2)多线性数据可以由矢量空间的子空间描述。子空间表示已采用模式集识别,其张量表示对应物也在文献中提供。然而,传统方法不使用张量的辨别信息,降低分类精度。在这种情况下,广义差分子空间(GDS)通过降低数据冗余和揭示鉴别结构来提供增强的子空间表示。由于GDS不处理张量数据,我们提出了一种名为N模式GD的新投影,其有效地处理张量数据。我们还将N模式Fisher评分作为类别可分离指标和基于张力数据相似性的测距距离的改进度量。在手势和动作识别上的实验结果表明,该方法优于文献中常用的方法,而无需依赖于预先训练的模型或转移学习。

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