Papers of Guobiao Mei
Unsupervised Image Embedding Using Nonparametric Statistics (2008)
by Guobiao Mei and
Christian R. Shelton
Abstract:
Embedding images into a low dimensional space has a wide range of applications:
visualization, clustering, and pre-processing for supervised learning.
Traditional dimension reduction algorithms assume that the examples densely
populate the manifold. Image databases tend to break this assumption, having
isolated islands of similar images instead. In this work, we propose a novel
approach that embeds images into a low dimensional Euclidean space, while
preserving local image similarities based on their scale invariant feature
transform (SIFT) vectors. We make no neighborhood assumptions in our embedding.
Our algorithm can also embed the images in a discrete grid, useful for many
visualization tasks. We demonstrate the algorithm on images with known
categories and compare our accuracy favorably to those of competing algorithms.
Download Information
Guobiao Mei and Christian R. Shelton (2008). "Unsupervised
Image Embedding Using Nonparametric Statistics." Proceedings of the
Nineteenth International Conference on Pattern Recognition (doi:
10.1109/ICPR.2008.4761051). |
 |
 |
 |
Bibtex Citation
@inproceedings{MeiShe08,
author = "Guobiao Mei and Christian R. Shelton",
title = "Unsupervised Image Embedding Using Nonparametric Statistics",
booktitle = "Proceedings of the Nineteenth International Conference on Pattern Recognition",
booktitleabbr = "{ICPR}-2008",
doi = "10.1109/ICPR.2008.4761051",
year = 2008,
}
Homepage of Guobiao Mei