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Human Face Detection Improvement Using Incremental Learning Based on Low Variance Directions

机译:基于低方差方向的增量学习改进人脸检测

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Systems that rely on Face Detection have gained great importance ever, since large-scale databases of thousands of face images are collected from several sources. Thus, the use of an outperforming face detector becomes a challenging problem. Different classification models have been studied and applied for face detection. However, such models involve large scale datasets, which requires huge memory and enormous amount of training time. Therefore, in this paper, we investigate the potency of incrementally projecting data in low variance directions. In fact, in one-class classification, the low variance directions in the training data carry crucial information to build a good model of the target class. On the other hand, incremental learning is known to be powerful, when dealing with dynamic data. We performed extensive tests on human faces, and comparative experiments have been carried out to show the effectiveness and superiority of our proposed method over other face detection methods.
机译:自从多个来源收集了数千张人脸图像的大规模数据库以来,依赖于人脸检测的系统已经变得越来越重要。因此,使用性能优异的面部检测器成为具有挑战性的问题。已经研究了不同的分类模型并将其应用于面部检测。但是,此类模型涉及大规模数据集,这需要巨大的内存和大量的训练时间。因此,在本文中,我们研究了在低方差方向上增量投影数据的潜力。实际上,在一类分类中,训练数据中的低方差方向会携带至关重要的信息,以建立目标类的良好模型。另一方面,在处理动态数据时,增量学习功能强大。我们对人脸进行了广泛的测试,并进行了对比实验,以证明我们的方法相对于其他人脸检测方法的有效性和优越性。

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