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CREST: Convolutional Residual Learning for Visual Tracking

About

Discriminative correlation filters (DCFs) have been shown to perform superiorly in visual tracking. They only need a small set of training samples from the initial frame to generate an appearance model. However, existing DCFs learn the filters separately from feature extraction, and update these filters using a moving average operation with an empirical weight. These DCF trackers hardly benefit from the end-to-end training. In this paper, we propose the CREST algorithm to reformulate DCFs as a one-layer convolutional neural network. Our method integrates feature extraction, response map generation as well as model update into the neural networks for an end-to-end training. To reduce model degradation during online update, we apply residual learning to take appearance changes into account. Extensive experiments on the benchmark datasets demonstrate that our CREST tracker performs favorably against state-of-the-art trackers.

Yibing Song, Chao Ma, Lijun Gong, Jiawei Zhang, Rynson Lau, Ming-Hsuan Yang• 2017

Related benchmarks

TaskDatasetResultRank
Visual Object TrackingVOT 2016
EAO28.3
79
Visual Object TrackingOTB 2015 (test)--
47
Visual Object TrackingOTB-100
AUC62.3
21
Visual Object TrackingTB50 (test)
OP68.8
18
Visual Object TrackingOTB 2013
Mean OP86
17
Visual Object TrackingOTB 2013
AUC67.3
17
Visual Object TrackingOTB 2015
OP77.5
12
Visual Object TrackingOTB-100
Mean OP77.6
8
Visual Object TrackingOTB50
Mean OP68.8
8
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