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Robust Face Recognition with Partial Distortion and Occlusion from Small Number of Samples Per Class

机译:每类少量样本具有部分失真和遮挡的鲁棒人脸识别

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The posterior union decision-based neural network (PUD-BNN) has been proposed in our previous work for dealing with face recognition task subject to partial occlusion and distortion. However, one difficult of this method is inaccurate to model classes with only a single, or a small number of training samples. In this paper, we proposed an extern approach to tackle above problem by two strategies. Firstly, the new approach artificially constructs some new training data with original training images for complementing training data. Moreover, an efficient density estimation method is used into PUDBNN to tackle the reliable likelihood densities estimation with insufficient training samples. The new approach has been evaluated on two face image databases, XM2VTS and AR, using testing images subjected to various types of partial distortion and occlusion. The new system has demonstrated improved performance over other systems. acronyms.
机译:在我们先前的工作中已经提出了基于后联合决策的神经网络(PUD-BNN),用于处理部分遮挡和变形的人脸识别任务。但是,这种方法的一个困难是仅用一个或少量训练样本来对类进行建模是不准确的。在本文中,我们提出了一种通过两种策略来解决上述问题的外部方法。首先,新方法以原始训练图像人为地构建了一些新的训练数据,以补充训练数据。此外,PUDBNN中使用了一种有效的密度估计方法,以解决训练样本不足时可靠的似然密度估计问题。该新方法已经在两个面部图像数据库XM2VTS和AR上进行了评估,使用了经受各种类型的部分失真和遮挡的测试图像。新系统已展示出比其他系统更高的性能。首字母缩写词。

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