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Incremental Sequential Three-Way Decision Using a Deep Stacked Autoencoder

机译:使用深层堆叠的AutoEncoder增量顺序三向决策

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Most traditional face recognition classifiers attempt to min-imize recognition error rate rather than misclassification costs, which is unreasonable in many real world applications. On the other hand, many facial images are usually unlabeled, and the label process may result in high costs. Considering imbalanced misclassification costs and the hardship of gathering sufficient labeled images, an incremental sequential three-way decisions (3WD) model for cost-sensitive face recognition is proposed, in which a deep stacked autoencoder (DSAE) is used to extract an effcient deep feature set. The model takes full account of the costs of obtaining labeled data in real life. In addition, the model incorporales the boundary decision into the process of making decision, leading to a delayed decisión with insufficient labeled images, which simulates the decision-making process from a small amount to a large amount of data. In summary, the model aims to select an optimal decision step so as to gain the desirable recognition results with the least amount of data. This strategy is applied to two facial image databases, which valídate the effectiveness of the proposed methods.
机译:大多数传统的人脸识别分类试图最小imize识别错误率,而不是误分类成本,这在许多现实世界的应用不合理。在另一方面,许多人脸图像通常未标记,标签过程可能会导致成本高。考虑不平衡误分类成本和采集足够标记图像的困难,对成本敏感的面部识别的增量顺序三通决定(3WD)模型提出,其中,深堆叠自动编码器(DSAE)用于提取effcient深特征放。该模型充分考虑了在现实生活中获得的标签数据的成本。另外,该模型incorporales边界决定进入决策的过程中,导致用标记的图像不充分的延迟决定,这模拟了决策过程从少量到大量的数据的。总之,该模型的目的以选择一个最优决策步骤,以获得与数据的最低量的期望的识别结果。这种策略被应用到两个面部图像数据库,这验证了该方法的有效性。

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