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Efficient low-rank supported extreme learning machine for robust face recognition

机译:高效的低等级支持的极限学习机,可实现可靠的人脸识别

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Recently, deep learning based face recognition algorithms have achieved great success in recognition performance. However, designing and training complex learning models suffer from time and labor efficiency. In this paper, we propose a novel three-layer low-rank supported extreme learning machine (LSELM) algorithm to take advantage of both robust feature representation and fast classification for efficient recognition. Every given probe sample is first clustered into a sub-class spanned by linear representation. With this sub-class, low-rank and robust features that are insensitive to disguise, noise, variant expression or illumination are recovered. These discriminative features are then coded to support a forward neural network for efficient prediction. Experimental results show that LSELM is on par with other deep learning based face recognition algorithms in recognition performance but has less time complexity on both AR and extend Yale-B datasets.
机译:最近,基于深度学习的面部识别算法在识别性能方面取得了巨大成功。但是,设计和训练复杂的学习模型会浪费时间和劳动效率。在本文中,我们提出了一种新颖的三层低秩支持极限学习机(LSELM)算法,以利用鲁棒的特征表示和快速分类来进行有效识别。首先将每个给定的探针样本聚类为一个以线性表示形式跨越的子类。使用此子类,可以恢复对伪装,噪声,变体表达或照明不敏感的低等级且健壮的功能。然后对这些判别特征进行编码,以支持前向神经网络进行有效预测。实验结果表明,LSELM在识别性能上与其他基于深度学习的面部识别算法相当,但在AR和扩展Yale-B数据集上的时间复杂度都较低。

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