Galaxy Morphological Classification with Zernike Moments and Machine Learning Approaches
Hamed Ghaderi, Nasibe Alipour, Hossein Safari

TL;DR
This study demonstrates that machine learning models using Zernike moments effectively classify galaxy types and distinguish galaxies from non-galaxies with high accuracy, offering a robust approach for astronomical image analysis.
Contribution
The paper introduces the use of Zernike moments combined with machine learning models for galaxy classification, outperforming traditional image feature-based methods.
Findings
SVM and 1D-CNN with ZMs achieve TSS > 0.86 in galaxy-non-galaxy classification.
High accuracy (>90%) in classifying galaxy types into spiral, elliptical, and odd objects.
Zernike moments effectively capture galaxy features, enhancing classification performance.
Abstract
Classifying galaxies is an essential step for studying their structures and dynamics. Using GalaxyZoo2 (GZ2) fractions thresholds, we collect 545 and 11,735 samples in non-galaxy and galaxy classes, respectively. We compute the Zernike moments (ZMs) for GZ2 images, extracting unique and independent characteristics of galaxies. The uniqueness due to the orthogonality and completeness of Zernike polynomials, reconstruction of the original images with minimum errors, invariances (rotation, translation, and scaling), different block structures, and discriminant decision boundaries of ZMs' probability density functions for different order numbers indicate the capability of ZMs in describing galaxy features. We classify the GZ2 samples, firstly into the galaxies and non-galaxies and secondly, galaxies into spiral, elliptical, and odd objects (e.g., ring, lens, disturbed, irregular, merger,…
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Taxonomy
TopicsAstronomical Observations and Instrumentation · Geochemistry and Geologic Mapping
