Fast Online Object Tracking and Segmentation: A Unifying Approach
Qiang Wang, Li Zhang, Luca Bertinetto, Weiming Hu, Philip H. S. Torr
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ReproduceCode
- github.com/foolwood/SiamMaskpytorch★ 3,546
- github.com/shallowtoil/DROLpytorch★ 0
- github.com/ezelikman/anonymalpytorch★ 0
Abstract
In this paper we illustrate how to perform both visual object tracking and semi-supervised video object segmentation, in real-time, with a single simple approach. Our method, dubbed SiamMask, improves the offline training procedure of popular fully-convolutional Siamese approaches for object tracking by augmenting their loss with a binary segmentation task. Once trained, SiamMask solely relies on a single bounding box initialisation and operates online, producing class-agnostic object segmentation masks and rotated bounding boxes at 55 frames per second. Despite its simplicity, versatility and fast speed, our strategy allows us to establish a new state of the art among real-time trackers on VOT-2018, while at the same time demonstrating competitive performance and the best speed for the semi-supervised video object segmentation task on DAVIS-2016 and DAVIS-2017. The project website is http://www.robots.ox.ac.uk/~qwang/SiamMask.
Tasks
Benchmark Results
| Dataset | Model | Metric | Claimed | Verified | Status |
|---|---|---|---|---|---|
| DAVIS 2016 | SiamMask | J&F | 69.75 | — | Unverified |
| DAVIS-2017 (test-dev) | SiamMask | J&F | 43.2 | — | Unverified |
| DAVIS 2017 (val) | SiamMask | J&F | 56.4 | — | Unverified |