Title
PathTrack: Fast Trajectory Annotation with Path Supervision
Abstract
Progress in Multiple Object Tracking (MOT) has been historically limited by the size of the available datasets. We present an efficient framework to annotate trajectories and use it to produce a MOT dataset of unprecedented size. In our novel path supervision the annotator loosely follows the object with the cursor while watching the video, providing a path annotation for each object in the sequence. Our approach is able to turn such weak annotations into dense box trajectories. Our experiments on existing datasets prove that our framework produces more accurate annotations than the state of the art, in a fraction of the time. We further validate our approach by crowdsourcing the PathTrack dataset, with more than 15,000 person trajectories in 720 sequences. Tracking approaches can benefit training on such large-scale datasets, as did object recognition. We prove this by re-training an off-the-shelf person matching network, originally trained on the MOT15 dataset, almost halving the misclassification rate. Additionally, training on our data consistently improves tracking results, both on our dataset and on MOT15. On the latter, we improve the top-performing tracker (NOMT) dropping the number of ID Switches by 18% and fragments by 5%.
Year
DOI
Venue
2017
10.1109/ICCV.2017.40
2017 IEEE International Conference on Computer Vision (ICCV)
Keywords
DocType
Volume
fast trajectory annotation,Multiple Object Tracking,MOT dataset,unprecedented size,novel path supervision,path annotation,weak annotations,dense box trajectories,PathTrack dataset,large-scale datasets,object recognition,MOT15 dataset,misclassification rate,top-performing tracker,NOMT,ID Switches
Conference
abs/1703.02437
Issue
ISSN
ISBN
1
1550-5499
978-1-5386-1033-6
Citations 
PageRank 
References 
4
0.52
32
Authors
4
Name
Order
Citations
PageRank
Santiago Manen11558.71
Michael Gygli223214.18
Dengxin Dai342335.20
Luc Van Gool4275661819.51