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Akin-based Orthogonal Space (AOS): a subspace learning method for face recognition

机译:基于基于的正交空间(AOS):面部识别子空间学习方法

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摘要

A projection learning space is an approach to mapping a high-dimensional vector space to a lower dimensional vector space. In this paper, we proposed an algorithm, namely, AOS: Akin based Orthogonal Space. The algorithm is driven with two major targets - (i) to choose most representative image(s) from a group of face images of an individual, (ⅱ) finally to produce a learning space which follows a Gaussian distribution to reduce the influence of grosses like non-Gaussianly distributed data noises, variations in facial expression and illumination. To improve the recognition performance, we proposed another approach i.e. fusion between AOS features and a custom VGG features. We justify the effectiveness of the proposed approaches over five benchmark face datasets using two classifiers. Experimental results show that the proposed learning algorithm has obtained maximum of 92.22% recognition rate, as well deep learning based fusion approch greatly improves the recognition accuracy. The comparative performances demonstrate that the proposed method could significantly outperform other relevant subspace learning methods.
机译:投影学习空间是将高维向量空间映射到较低维度矢量空间的方法。在本文中,我们提出了一种算法,即AOS:基于基于正交的空间。该算法与两个主要目标驱动 - (i)从个人的一组面部图像中选择大多数代表性图像,(Ⅱ)最后产生遵循高斯分布的学习空间,以减少总体的影响与非高斯分布的数据噪声一样,面部表情和照明的变化。为了提高识别性能,我们提出了另一种方法,即AOS功能与自定义VGG功能之间的融合。我们用两个分类器证明提出的方法对五个基准面部数据集的有效性。实验结果表明,所提出的学习算法最多获得了92.22%的识别率,因为基于深度的基于学习的融合批准量大大提高了识别准确性。比较表现表明,该方法可以显着优于其他相关的子空间学习方法。

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