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arXiv:2002.02775 [cs.LG]AbstractReferencesReviewsResources

Context Aware Image Annotation in Active Learning

Yingcheng Sun, Kenneth Loparo

Published 2020-02-06Version 1

Image annotation for active learning is labor-intensive. Various automatic and semi-automatic labeling methods are proposed to save the labeling cost, but a reduction in the number of labeled instances does not guarantee a reduction in cost because the queries that are most valuable to the learner may be the most difficult or ambiguous cases, and therefore the most expensive for an oracle to label accurately. In this paper, we try to solve this problem by using image metadata to offer the oracle more clues about the image during annotation process. We propose a Context Aware Image Annotation Framework (CAIAF) that uses image metadata as similarity metric to cluster images into groups for annotation. We also present useful metadata information as context for each image on the annotation interface. Experiments show that it reduces that annotation cost with CAIAF compared to the conventional framework, while maintaining a high classification performance.

Comments: arXiv admin note: text overlap with arXiv:1508.07647, arXiv:1207.3809 by other authors
Journal: 2019 19th Industrial Conference on Data Mining
Categories: cs.LG, cs.IR
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