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Supervised Feature Learning Network Based on the Improved LLE for face recognition

机译:基于改进的LLE对人脸识别的监督特征学习网络

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Deep neural networks (DNNs) have been successfully applied in the fields of computer vision and pattern recognition. One drawback of DNNs is that most of existing DNNs models and their variants usually need to learn a very large set of parameters. Another drawback of DNNs is that DNNs does not fully take the class label and local structure into account during the training stage. To address these issues, this paper proposes a novel approach, called Supervised Feature Learning Network Based on the Improved LLE (SFLNet) for face recognition. The goal of SFLNet is to extract features efficiently. Thus SFLNet consists of learning kernels based on the improved Locally Linear Embedding (LLE) and multiscale feature analysis. Instead of taking image pixels as the input of LLE algorithm, the improved LLE uses linear discriminant kernel distance (LDKD). Besides, the outputs of the improved LLE are convolutional kernels, not the dimensional reduction features. Mutiscale feature analysis enhances the insensitive to complex changes caused by large pose, expression, or illumination variations. So SFLNet has better discrimination and is more suitable for face recognition task. Experimental results on Extended Yale B and AR dataset shows the impressive improvement of the proposed method and robustness to occlusion when compared with other state-of-art methods.
机译:深度神经网络(DNN)已成功应用于计算机视觉和模式识别的领域。 DNN的一个缺点是,大多数现有的DNN模型及其变体通常需要学习一组非常大的参数。 DNN的另一个缺点是DNN在训练阶段期间不完全占用类标签和本地结构。为解决这些问题,本文提出了一种新颖的方法,基于改进的LLE(SFLNET)进行了用于人脸识别的监督特征学习网络。 SFLNET的目标是有效地提取特征。因此,SFLNET由基于改进的本地线性嵌入(LLE)和多尺度特征分析来学习内核。改进的LLE使用线性判别内核(LDKD)而不是将图像像素拍摄图像像素作为LLE算法的输入。此外,改进的LLE的输出是卷积核,而不是尺寸减少特征。 Mutiscale特征分析增强了由大姿势,表达或照明变化引起的复杂变化的不敏感。因此,SFLNET具有更好的歧视,更适合面部识别任务。延伸耶鲁B和AR数据集的实验结果显示了与其他最先进的方法相比,令人兴奋地改善了所提出的方法和鲁布斯的闭塞。

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