Abstract
We propose an image analysis unsupervised learning algorithm that can detect peculiar galaxies in datasets of galaxy images. The algorithm first computes a large set of calculated characteristics reflecting different aspects of the visual content, and then weighs them based on the σ of the values computed from the galaxy images. The weighted Euclidean distance of each galaxy image from the median is measured, and the peculiarity of each galaxy is determined based on that distance. Experimental results using irregular galaxy images show that the method can effectively detect peculiar galaxies. Code and data used in the experiments are freely available.
Author
Lior Shamir
Journal
Journal of Computational Science
Paper Publication Date
May 2012
Paper Type
Astroinformatics