基于卷积神经网络的半监督增量三向决策

Yuwei Liang, Huaxiong Li, Bing Huang, Zhuohuai Guan, Pei Yang
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引用次数: 1

摘要

本文旨在开发一种新的成本敏感人脸识别框架,以最小的总成本获得理想的识别结果。通过结合深度卷积神经网络(cnn)和顺序三向决策(3WD)两种新技术,我们的框架可以自动标记新样本,并将延迟决策纳入决策过程。我们首先探索了在标记训练数据稀缺的情况下的半监督人脸识别方法。通过对未标记数据的类估计和深度卷积特征提取的共同学习,生成经过标记训练数据和未标记数据训练的CNN。然后,我们不再寻求较低的识别错误率,而是在每个决策步骤中寻求最小的错误分类代价。为此,我们在我们的代价敏感人脸识别框架中引入了顺序3WD方法,该框架将半监督学习的每次迭代作为决策步骤。当标签样品不足时,采用延迟决策来降低决策成本。最后,在决策过程中也考虑了测试成本,将误分类成本与测试成本之和作为总成本。以总代价为目标函数,对性能指标进行优化,训练得到总代价最小的分类器。简而言之,该模型力求获得最优的决策步长,从而在少量标记数据的情况下获得可靠的识别结果。本文的工作价值在于证明了该方法在两个人脸数据集上的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-Supervised Incremental Three-Way Decision Using Convolutional Neural Network
This paper aims to develop a novel cost-sensitive face recognition framework, which can gain the desirable recognition results with the least total cost. By combining two recently rising techniques: deep convolutional neural networks (CNNs) and sequential three-way decision (3WD) method, our framework can automatically label new samples and incorporates the delayed decision into decision-making process. We first explore the semi-supervised face recognition method in the case of the scarcity of labeled training data. By learning the class estimation and the deep convolution feature extraction of the unlabeled data jointly, the CNN trained by both labeled training data and unlabeled data is generated. Then, rather than getting a lower recognition error rate, we focus on seeking the minimum cost of misclassification at each decision step. For this purpose, we introduce the method of sequential 3WD in our cost-sensitive face recognition framework, which take each iteration of semi-supervised learning as a decision-making step. When there are insufficient labeled samples, a delayed decision will be adopted to reduce the decision cost. Finally, the test cost is also considered in the decision-making process, and the sum of misclassification cost and test cost is taken as the total cost. Using the total cost as the objective function, optimizing the performance indicators, training to get the classifier with the smallest total cost. In short, the model strives to get an optimal decision step, so that the reliable identification result can be obtained with only a small number of labeled data. The work value of this paper is to prove the effectiveness of our method in two face datasets.
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