Authors
Di Yuan, Xiaojun Chang, Po-Yao Huang, Qiao Liu, Zhenyu He
Publication date
2020/12/1
Journal
IEEE Transactions on Image Processing
Volume
30
Pages
976-985
Publisher
IEEE
Description
The training of a feature extraction network typically requires abundant manually annotated training samples, making this a time-consuming and costly process. Accordingly, we propose an effective self-supervised learning-based tracker in a deep correlation framework (named: self-SDCT). Motivated by the forward-backward tracking consistency of a robust tracker, we propose a multi-cycle consistency loss as self-supervised information for learning feature extraction network from adjacent video frames. At the training stage, we generate pseudo-labels of consecutive video frames by forward-backward prediction under a Siamese correlation tracking framework and utilize the proposed multi-cycle consistency loss to learn a feature extraction network. Furthermore, we propose a similarity dropout strategy to enable some low-quality training sample pairs to be dropped and also adopt a cycle trajectory consistency loss …
Total citations
202120222023202438838236
Scholar articles
D Yuan, X Chang, PY Huang, Q Liu, Z He - IEEE Transactions on Image Processing, 2020