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A unified tensor framework for face recognition

机译:统一的人脸张量框架

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摘要

In this paper we propose a new optimization framework that unites some of the existing tensor based methods for face recognition on a common mathematical basis. Tensor based approaches rely on the ability to decompose an image into its constituent factors (i.e. person, lighting, viewpoint, etc.) and then utilizing these factor spaces for recognition. We first develop a multilinear optimization problem relating an image to its constituent factors and then develop our framework by formulating a set of strategies that can be followed to solve this optimization problem. The novelty of our research is that the proposed framework offers an effective methodology for explicit non-empirical comparison of the different tensor methods as well as providing a way to determine the applicability of these methods in respect to different recognition scenarios. Importantly, the framework allows the comparative analysis on the basis of quality of solutions offered by these methods. Our theoretical contribution has been validated by extensive experimental results using four benchmark datasets which we present along with a detailed discussion.
机译:在本文中,我们提出了一个新的优化框架,该框架在通用数学基础上结合了一些基于现有张量的人脸识别方法。基于张量的方法依赖于将图像分解成其构成因素(即人,光线,视点等),然后利用这些因素空间进行识别的能力。我们首先开发一个将图像与其构成因素相关联的多线性优化问题,然后通过制定一套可以遵循的解决该优化问题的策略来开发我们的框架。我们研究的新颖之处在于,提出的框架为不同张量方法的显式非经验比较提供了有效的方法,并提供了一种方法来确定这些方法在不同识别场景下的适用性。重要的是,该框架允许根据这些方法提供的解决方案的质量进行比较分析。我们的理论贡献已经通过使用四个基准数据集的广泛实验结果得到了验证,我们将在此进行详细讨论。

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