Authors
Meng Wang, Xian-Sheng Hua, Jinhui Tang, Richang Hong
Publication date
2009/4
Journal
Multimedia, IEEE Transactions on
Volume
11
Issue
3
Pages
465-476
Publisher
IEEE
Description
In the past few years, video annotation has benefited a lot from the progress of machine learning techniques. Recently, graph-based semi-supervised learning has gained much attention in this domain. However, as a crucial factor of these algorithms, the estimation of pairwise similarity has not been sufficiently studied. Generally, the similarity of two samples is estimated based on the Euclidean distance between them. But we will show that the similarity between two samples is not merely related to their distance but also related to the distribution of surrounding samples and labels. It is shown that the traditional distance-based similarity measure may lead to high classification error rates even on several simple datasets. To address this issue, we propose a novel neighborhood similarity measure, which explores the local sample and label distributions. We show that the neighborhood similarity between two samples …
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