학술논문

Efficient Diverse Ensemble for Discriminative Co-tracking
Document Type
Conference
Source
2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition CVPR Computer Vision and Pattern Recognition (CVPR), 2018 IEEE/CVF Conference on. :4814-4823 Jun, 2018
Subject
Computing and Processing
Target tracking
Training
Boosting
Diversity reception
Training data
Adaptation models
Object detection
Language
ISSN
2575-7075
Abstract
Ensemble discriminative tracking utilizes a committee of classifiers, to label data samples, which are in turn, used for retraining the tracker to localize the target using the collective knowledge of the committee. Committee members could vary in their features, memory update schemes, or training data, however, it is inevitable to have committee members that excessively agree because of large overlaps in their version space. To remove this redundancy and have an effective ensemble learning, it is critical for the committee to include consistent hypotheses that differ from one-another, covering the version space with minimum overlaps. In this study, we propose an online ensemble tracker that directly generates a diverse committee by generating an efficient set of artificial training. The artificial data is sampled from the empirical distribution of the samples taken from both target and background, whereas the process is governed by query-by-committee to shrink the overlap between classifiers. The experimental results demonstrate that the proposed scheme outperforms conventional ensemble trackers on public benchmarks.