A Twofold Siamese Network for Real-Time Object Tracking

CVPR 2018  ·  Anfeng He, Chong Luo, Xinmei Tian, Wen-Jun Zeng ·

Observing that Semantic features learned in an image classification task and Appearance features learned in a similarity matching task complement each other, we build a twofold Siamese network, named SA-Siam, for real-time object tracking. SA-Siam is composed of a semantic branch and an appearance branch. Each branch is a similarity-learning Siamese network. An important design choice in SA-Siam is to separately train the two branches to keep the heterogeneity of the two types of features. In addition, we propose a channel attention mechanism for the semantic branch. Channel-wise weights are computed according to the channel activations around the target position. While the inherited architecture from SiamFC \cite{SiamFC} allows our tracker to operate beyond real-time, the twofold design and the attention mechanism significantly improve the tracking performance. The proposed SA-Siam outperforms all other real-time trackers by a large margin on OTB-2013/50/100 benchmarks.

PDF Abstract CVPR 2018 PDF CVPR 2018 Abstract

Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Visual Object Tracking OTB-2013 SA-Siam AUC 0.677 # 2
Visual Object Tracking OTB-2015 SA-Siam AUC 0.657 # 10
Visual Object Tracking OTB-50 SA-Siam AUC 0.610 # 1

Methods


No methods listed for this paper. Add relevant methods here