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首页> 外文期刊>Internet of Things Journal, IEEE >Sparse Common Feature Representation for Undersampled Face Recognition
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Sparse Common Feature Representation for Undersampled Face Recognition

机译:稀疏的常见功能表示用于欠采样的面部识别

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摘要

This work investigates the problem of undersampled face recognition (i.e., insufficient training data) encountered in practical Internet-of-Things (IoT) applications. Insufficient and uncertain samples captured by IoT devices may include background and facial disguise that makes face recognition more challenging than that with sufficient and reliable images. Many models work well in face recognition on a big data set, but when training data are insufficient, they achieve unsatisfactory performance. This work proposes a novel method named sparse common feature-based representation (SCFR) that provides a unique and stable result and completely avoids very time-consuming training required by a deep learning model. Specially, it constructs a common feature dictionary using both training and test images. Thereinto, a common feature is based on a discriminative common vector and learned by a Gaussian mixture model for both training and test images in a semisupervised learninig manner, which would reduce the difference among samples in each class. In the optimization, the latent indicator of test data is initialized by the estimated label. This can avoid learning invalid information and lead to good prototype images. A new variation dictionary characterizes variables that can be shared by different classes. Finally, this work adopts minimum reconstruction residuals to recognize test images, thus bringing about a substantial improvement in SCFR's performance. Extensive results on benchmark face databases demonstrate that the proposed method is better than the state-of-the-art methods handling undersampled face recognition.
机译:这项工作调查了在实际互联网(物联网)应用中遇到的欠采样面部识别(即,培训数据不足)的问题。由物联网设备捕获的不确定样本可能包括背景和面部伪装,使得面部识别比具有足够的图像的面对更具有挑战性的。许多模型在大数据集上识别良好工作,但是当培训数据不足时,它们才能实现不令人满意的性能。这项工作提出了一种名为基于稀疏公共特征的表示(SCFR)的新方法,提供了独特稳定的结果,并完全避免了深度学习模型所需的非常耗时的训练。特别是,它使用训练和测试图像构建一个常见的特征词典。其中,一个共同的特征基于鉴别的常见载体,并由高斯混合模型学习,以便以半熟的学习方式进行训练和测试图像,这将减少每个类别中的样本之间的差异。在优化中,测试数据的潜在指示符被估计的标签初始化。这可以避免学习无效信息并导致好​​的原型图像。新的变体字典表征了可以由不同类共享的变量。最后,这项工作采用最小的重建残余来识别测试图像,从而提高SCFR性能的大量改善。基准面部数据库的广泛结果表明,所提出的方法优于处理欠采样的面部识别的最先进的方法。

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