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  4. FasterMDNet: Learning model adaptation by RNN in tracking-by-detection based visual tracking
 
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FasterMDNet: Learning model adaptation by RNN in tracking-by-detection based visual tracking

Journal
Proceedings - 9th Asia-Pacific Signal and Information Processing Association Annual Summit and Conference, APSIPA ASC 2017
Journal Volume
2018-February
Pages
657-660
Date Issued
2018
Author(s)
Hsu, H.-W.
JIAN-JIUN DING  
DOI
10.1109/APSIPA.2017.8282115
URI
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85050802449&doi=10.1109%2fAPSIPA.2017.8282115&partnerID=40&md5=4166928ed5a5fb303312f8b3782ba032
Abstract
Recently in VOT competitions, trackers based on tracking-by-detection and deep neural network discriminators reached impressive accuracy. However, these trackers require time-consuming model adaptation methods like online learning to handle target appearance changes, which tremendously increases the time complexity and becomes an obstruction in realworld applications for these tracking algorithms. In this paper, we propose an efficient RNN-based model adaptation method which extremely decreases the time complexity of trackers. The proposed model learns the relations of relative model change in RNN training and predicts the score and the model adaptation state at the same time in testing, which nearly removes the finetuning time in the cost of additional RNN training. The proposed method is applicable to any tracker based on neural network discriminator. The RNN branch can be further designed with more complicated model under the condition of enough training videos. We apply the proposed algorithm to MDNet and create a new tracker: Faster-MDNet. According to the experiment, using our method can nearly remove the time of finetuning and reduce the bottleneck of time-complexity down to the prediction time. © 2017 IEEE.
SDGs

[SDGs]SDG10

Other Subjects
Deep neural networks; Discriminators; Learning models; Model Adaptation; Online learning; Prediction time; Time complexity; Tracking algorithm; Tracking by detections; Visual Tracking; Complex networks
Type
conference paper

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