4.4 Article

Independency-enhancing adversarial active learning

期刊

IET IMAGE PROCESSING
卷 17, 期 5, 页码 1427-1437

出版社

WILEY
DOI: 10.1049/ipr2.12724

关键词

computer vision; image classification; image segmentation

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The core idea of active learning is to achieve higher model performance at a reduced annotation cost. This paper introduces an independency-enhancing adversarial active learning method, which differs from previous approaches by emphasizing sample independence. The informativeness of a group of samples is believed to be related to sample independence rather than the simple sum of individual sample informativeness. To ensure sample independence, an independent sample selection module based on hierarchical clustering is designed. An adversarial approach is also utilized to learn the feature representation and label the state of the sample based on predicted loss value. Sample selection is performed based on sample uncertainty, diversity, and independence. Experimental results on four datasets demonstrate the effectiveness and superiority of this independency-enhancing adversarial active learning approach.
The core idea of active learning is to obtain higher model performance with less annotation cost. This paper proposes an independency-enhancing adversarial active learning method. Independency-enhancing adversarial active learning is different from the previous methods and pays more attention to sample independence. Specifically, it is believed that the informativeness of a group of samples is related to sample independence rather than the simple sum of the informativeness of each sample in the group. Therefore, an independent sample selection module based on hierarchical clustering is designed to ensure sample independence. An adversarial approach is used to learn the feature representation of a sample and use the predicted loss value to label the state of the sample. Finally, samples are selected according to the uncertainty of the samples, the diversity of the samples and the independence of the samples. The experimental results on four datasets (CIFAR-100, Caltech-101, Cityscapes and BDD100K) demonstrate the effectiveness and superiority of independency-enhancing adversarial active learning.

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