An Active Learning Based Approach For Effective Video Annotation And Retrieval
Abstract
Conventional multimedia annotation/retrieval systems such as Normalized Continuous Relevance Model (NormCRM) [16] require a fully labeled training data for a good performance. Active Learning, by determining an order for labeling the training data, allows for a good performance even before the training data is fully annotated. In this work we propose an active learning algorithm, which combines a novel measure of sample uncertainty with a novel clustering-based approach for determining sample density and diversity and integrate it with NormCRM. The clusters are also iteratively refined to ensure both feature and label-level agreement among samples. We show that our approach outperforms multiple baselines both on a recent, open character animation dataset and on the popular TRECVID corpus at both the tasks of annotation and text-based retrieval of videos.
Cite
@article{arxiv.1504.07004,
title = {An Active Learning Based Approach For Effective Video Annotation And Retrieval},
author = {Moitreya Chatterjee and Anton Leuski},
journal= {arXiv preprint arXiv:1504.07004},
year = {2015}
}
Comments
5 pages, 3 figures, Compressed version published at ACM ICMR 2015