AbdulWahab Kabani and Mahmoud R. El-Sakka, "How Important is
Scale in Galaxy Image Classification?", International
Conference on Computer Vision Theory and Applications,
VISAPP'2016, pp. 263-270, February 2016, Rome, Italy.
Abstract
In this paper, we study the importance of \emph{scale} on
Galaxy Image Classification. Galaxy Image classification
involves performing Morphological Analysis to determine the
shape of the galaxy. Traditionally, Morphological Analysis is
carried out by trained experts. However, as the number of
images of galaxies is increasing, there's a desire to come up
with a more scalable approach for classification. In this
paper, we pre-process the images to have three different
scales. Then, we train the same neural network for small
number of epochs (number of passes over the data) on all of
these three scales. After that, we report the performance of
the neural network on each scale. There are two main
contributions in this paper. First, we show that scale plays
a major role in the performance of the neural network.
Second, we show that normalizing the scale of the galaxy
image produces better results. Such normalization can be
extended to any image classification task with similar
characteristics to the galaxy images and where there's no
background clutter.