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A Semi-Supervised Learning Algorithm for Growing Neural Gas in Face Recognition

机译:用于人脸识别的神经气体生长的半监督学习算法

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摘要

In many classification applications and face recognition tasks, there exist unlabelled data available for training along with labelled samples. The use of unlabelled data can improve the performance of a classifier. In this paper, a semi-supervised growing neural gas is proposed for learning with such partly labelled datasets in face recognition applications. The classifier is first trained on the labelled data and then gradually unlabelled data is classified and added to the training data. The classifier is retrained; and so on. The proposed iterative algorithm conforms to the EM framework and is demonstrated, on both artificial and real datasets, to significantly boost the classification rate with the use of unlabelled data. The improvement is particularly great when the labelled dataset is small. Comparison with support vector machine classifiers is also given. The algorithm is computationally efficient and easy to implement.
机译:在许多分类应用程序和面部识别任务中,与标签样本一起存在可用于训练的未标签数据。使用未标记的数据可以提高分类器的性能。在本文中,提出了一种在人脸识别应用中使用这种部分标记的数据集进行学习的半监督神经气体。首先在标记数据上训练分类器,然后逐步将未标记数据分类并添加到训练数据中。分类器被重新训练;等等。所提出的迭代算法符合EM框架,并且在人工数据集和真实数据集上均得到了证明,可通过使用未标记的数据显着提高分类率。当标记的数据集较小时,改进特别明显。还与支持向量机分类器进行了比较。该算法计算效率高且易于实现。

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