Title
Data-Driven Probabilistic Occlusion Mask to Promote Visual Tracking
Abstract
Occlusion, one of the biggest challenges of visual tracking, impedes many trackers by corrupting observations, decaying the template accuracy, or introducing distracting occluders to the tracker. In this study, we propose a technique to detect occlusions through learning the foreground probability distributions. In our approach, the target is divided into a grid cells and the likelihood of occlusion is determined for each cell in a data-driven fashion. We introduce an occlusion indicator for each of the cells. By learning corresponding distribution of this indicator for each cell, using a diverse set of videos and targets, we obtain a set of occlusion probability distributions which is universally applicable to any video or object. By assigning an occlusion likelihood to different cells of an observation (i.e., creating an occlusion mask), our proposed approach provides a confidence measure for different parts of input observations and can be coupled with many generic tracking methods. In this study, we adopt four particle filter-based trackers -- multi-cue PFT, IVT, L1T, and L1APG -- to test the effectiveness of our occlusion mask. Utilizing the proposed occlusion mask lowers the weight of the erroneous parts of observation, allows for a more robust template update, and mitigates distraction by occluders. The method was evaluated on challenging videos. The quantitative results highlighted the tracking accuracy improvement and demonstrated successful tracking under different occlusion scenarios.
Year
DOI
Venue
2016
10.1109/CRV.2016.19
2016 13th Conference on Computer and Robot Vision (CRV)
Keywords
Field
DocType
Occlusion,Visual Tracking,Observation Mask
Distraction,Computer vision,BitTorrent tracker,Data-driven,Occlusion,Pattern recognition,Computer science,Particle filter,Probability distribution,Eye tracking,Artificial intelligence,Probabilistic logic
Conference
ISBN
Citations 
PageRank 
978-1-5090-2492-6
2
0.36
References 
Authors
13
4
Name
Order
Citations
PageRank
Kourosh Meshgi1405.85
Shin-ichi Maeda223813.16
Shigeyuki Oba329027.68
Shin Ishii453243.99