Exploiting Diversity of Unlabeled Data for Label-Efficient Semi-Supervised Active Learning
Abstract
The availability of large labeled datasets is the key component for the success of deep learning. However, annotating labels on large datasets is generally time-consuming and expensive. Active learning is a research area that addresses the issues of expensive labeling by selecting the most important samples for labeling. Diversity-based sampling algorithms are known as integral components of representation-based approaches for active learning. In this paper, we introduce a new diversity-based initial dataset selection algorithm to select the most informative set of samples for initial labeling in the active learning setting. Self-supervised representation learning is used to consider the diversity of samples in the initial dataset selection algorithm. Also, we propose a novel active learning query strategy, which uses diversity-based sampling on consistency-based embeddings. By considering the consistency information with the diversity in the consistency-based embedding scheme, the proposed method could select more informative samples for labeling in the semi-supervised learning setting. Comparative experiments show that the proposed method achieves compelling results on CIFAR-10 and Caltech-101 datasets compared with previous active learning approaches by utilizing the diversity of unlabeled data.
Cite
@article{arxiv.2207.12302,
title = {Exploiting Diversity of Unlabeled Data for Label-Efficient Semi-Supervised Active Learning},
author = {Felix Buchert and Nassir Navab and Seong Tae Kim},
journal= {arXiv preprint arXiv:2207.12302},
year = {2022}
}
Comments
International Conference on Pattern Recognition (ICPR) 2022