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Incremental learning of feature space and classifier for face recognition.

机译:特征空间和分类器的增量学习,用于人脸识别。

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We have proposed a new approach to pattern recognition in which not only a classifier but also a feature space of input variables is learned incrementally. In this paper, an extended version of Incremental Principal Component Analysis (IPCA) and Resource Allocating Network with Long-Term Memory (RAN-LTM) are effectively combined to implement this idea. Since IPCA updates a feature space incrementally by rotating the eigen-axes and increasing the dimensions, the inputs of a neural classifier must also change in their values and the number of input variables. To solve this problem, we derive an approximation of the update formula for memory items, which correspond to representative training samples stored in the long-term memory of RAN-LTM. With these memory items, RAN-LTM is efficiently reconstructed and retrained to adapt to the evolution of the feature space. This function is incorporated into our face recognition system. In the experiments, the proposed incremental learning model is evaluated over a self-compiled video clip of 24 persons. The experimental results show that the incremental learning of a feature space is very effective to enhance the generalization performance of a neural classifier in a realistic face recognition task.
机译:我们提出了一种新的模式识别方法,其中不仅可以逐步学习分类器,而且还可以学习输入变量的特征空间。在本文中,将增量主成分分析(IPCA)和具有长期内存的资源分配网络(RAN-LTM)的扩展版本有效地实现了此想法。由于IPCA通过旋转特征轴并增加尺寸来增量更新特征空间,因此神经分类器的输入还必须更改其值和输入变量的数量。为了解决此问题,我们导出了存储项更新公式的近似值,该更新项对应于存储在RAN-LTM长期存储器中的代表性训练样本。利用这些存储项,可以有效地重构和重新训练RAN-LTM以适应特征空间的发展。此功能已整合到我们的面部识别系统中。在实验中,通过24人的自编视频剪辑评估了建议的增量学习模型。实验结果表明,在现实的人脸识别任务中,特征空间的增量学习对于增强神经分类器的泛化性能非常有效。

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