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Semi-supervised active learning image classification method based on Tri-Training algorithm

机译:基于三训练算法的半监督主动学习图像分类方法

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This paper proposes an improved Cost-Effective Active Learning (CEAL) method for Deep Image Classification: Tri-CEAL, which was based on the Tri-training algorithm. By implementing the semi-supervised learning Tri-Training algorithm in CEAL, Tri-CEAL can use semi-supervised classification to select high-confidence samples in unlabeled samples for feature learning. At the same time, the active learning strategy in CEAL was improved to an active learning algorithm based on voting entropy, in which unlabeled samples with high information value are selected for manual labeling based on voting entropy. The classification experiments of Tri-CEAL algorithm and CEAL algorithm on CIFAR-10 indicate that the Tri-CEAL significantly reduces the workload of manually labeling samples and has better generalization performance on image classification problems.
机译:本文提出了一种改进的经济高效的主动学习(CEAL)方法,用于深度图像分类:三CEAL,基于三训练算法。通过在CEAL中实施半监督学习三训练算法,Tri-Ceal可以使用半监督分类来选择未标记样本中的高置信样本进行特征学习。同时,基于投票熵的主动学习算法改善了CEA中的主动学习策略,其中选择了基于投票熵的手动标记的具有高信息值的未标记样本。 CIFAR-10上三CEAL算法和CEAL算法的分类实验表明,Tri-Ceal显着降低了手动标记样本的工作量,并在图像分类问题上具有更好的泛化性能。

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