Global-Aware Siamese Network for Thermal Infrared Object Tracking

2021 ◽  
Vol 41 (6) ◽  
pp. 0615002
Author(s):  
李畅 Li Chang ◽  
杨德东 Yang Dedong ◽  
宋鹏 Song Peng ◽  
郭畅 Guo Chang
2019 ◽  
Vol 166 ◽  
pp. 71-81 ◽  
Author(s):  
Xin Li ◽  
Qiao Liu ◽  
Nana Fan ◽  
Zhenyu He ◽  
Hongzhi Wang

Electronics ◽  
2021 ◽  
Vol 10 (9) ◽  
pp. 1067
Author(s):  
Tongtong Yuan ◽  
Wenzhu Yang ◽  
Qian Li ◽  
Yuxia Wang

Siamese trackers are widely used in various fields for their advantages of balancing speed and accuracy. Compared with the anchor-based method, the anchor-free-based approach can reach faster speeds without any drop in precision. Inspired by the Siamese network and anchor-free idea, an anchor-free Siamese network (AFSN) with multi-template updates for object tracking is proposed. To improve tracking performance, a dual-fusion method is adopted in which the multi-layer features and multiple prediction results are combined respectively. The low-level feature maps are concatenated with the high-level feature maps to make full use of both spatial and semantic information. To make the results as stable as possible, the final results are obtained by combining multiple prediction results. Aiming at the template update, a high-confidence multi-template update mechanism is used. The average peak to correlation energy is used to determine whether the template should be updated. We use the anchor-free network to implement object tracking in a per-pixel manner, which computes the object category and bounding boxes directly. Experimental results indicate that the average overlap and success rate of the proposed algorithm increase by about 5% and 10%, respectively, compared to the SiamRPN++ algorithm when running on the dataset of GOT-10k (Generic Object Tracking Benchmark).


Author(s):  
Michael Felsberg ◽  
Matej Kristan ◽  
Jiři Matas ◽  
Aleš Leonardis ◽  
Roman Pflugfelder ◽  
...  

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