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Self-Taught Metric Learning without Labels

Title
Self-Taught Metric Learning without Labels
Authors
김성연김동원조민수곽수하
Date Issued
2022-06-22
Publisher
IEEE Computer Society
Abstract
We present a novel self-taught framework for unsuper-vised metric learning, which alternates between predicting class-equivalence relations between data through a moving average of an embedding model and learning the model with the predicted relations as pseudo labels. At the heart of our framework lies an algorithm that investigates contexts of data on the embedding space to predict their class-equivalence relations as pseudo labels. The algorithm enables efficient end-to-end training since it demands no off-the-shelf module for pseudo labeling. Also, the class-equivalence relations provide rich supervisory signals for learning an embedding space. On standard benchmarks for metric learning, it clearly outperforms existing unsupervised learning methods and sometimes even beats supervised learning models using the same backbone network. It is also applied to semi-supervised metric learning as a way of exploiting additional unlabeled data, and achieves the state of the art by boosting performance of supervised learning substantially.
URI
https://oasis.postech.ac.kr/handle/2014.oak/122827
Article Type
Conference
Citation
2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition, CVPR 2022, page. 7421 - 7431, 2022-06-22
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