14 September 2022 UStark: underwater image domain-adaptive tracker based on Stark
Yunfeng Li, Wei Huo, Zhuoyan Liu, Bo Wang, Ye Li
Author Affiliations +
Abstract

Though the open-air tracker has achieved an advanced level, its design is still a challenging task for degraded underwater images. Using underwater enhancement technology can improve the performance of underwater trackers. However, most underwater image enhancement methods focus on improving the visual effect rather than serving the tracker better. Therefore, we intended to explore a simple but powerful image domain-adaptive method to improve Stark’s performance by enhancing Stark’s input images. Specifically, it consists of underwater image adaptation network (UIAN) with double heads and adaptation block based on scene estimation (ABSE) that consists of three independent image processing modules without deep learning. UIAN is used to predict the category of image domain and parameters of ABSE. ABSE decodes the parameters and sequentially process underwater images in each module. The training of UIAN is independent of the training of the tracker. After training the class prediction head of UIAN first, freezing its weights, by initializing and tracking in one enhanced image and computing tracker’s loss, the parameter head can be trained to make sure UIANs hyperparameters can match the Stark tracker. The UStark proposed can adaptively process clear and degraded underwater images. Compared with Stark, UStark has improved the accuracy and success rate in typical underwater environments by 3.7% and 1.5% (blue), 5% and 3.4% (yellow), and 5.4% and 3.3% (dark), respectively. In addition, compared with other underwater image enhancement methods, our method can enhance the performance of the tracker in more categories of underwater images.

© 2022 SPIE and IS&T
Yunfeng Li, Wei Huo, Zhuoyan Liu, Bo Wang, and Ye Li "UStark: underwater image domain-adaptive tracker based on Stark," Journal of Electronic Imaging 31(5), 053012 (14 September 2022). https://doi.org/10.1117/1.JEI.31.5.053012
Received: 26 May 2022; Accepted: 24 August 2022; Published: 14 September 2022
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CITATIONS
Cited by 2 scholarly publications.
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KEYWORDS
Image enhancement

Image processing

Head

Visualization

Optical tracking

Image fusion

Image quality

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