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      Self-Supervised Deep Correlation Tracking

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          Abstract

          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 in each sample pair to improve the training loss function. At the tracking stage, we employ the pre-trained feature extraction network to extract features and utilize a Siamese correlation tracking framework to locate the target using forward tracking alone. Extensive experimental results indicate that the proposed self-supervised deep correlation tracker (self-SDCT) achieves competitive tracking performance contrasted to state-of-the-art supervised and unsupervised tracking methods on standard evaluation benchmarks.

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          Author and article information

          Contributors
          Journal
          IEEE Transactions on Image Processing
          IEEE Trans. on Image Process.
          Institute of Electrical and Electronics Engineers (IEEE)
          1057-7149
          1941-0042
          2021
          2021
          : 30
          : 976-985
          Article
          10.1109/TIP.2020.3037518
          33259298
          d57cec43-da73-49a6-b4b9-c662e3f1dcd1
          © 2021
          History

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