A new approach to feature-based asteroid taxonomy in 3D color space: 1. SDSS photometric system
Dong-Goo Roh, Hong-Kyu Moon, Min-Su Shin, and Francesca E. DeMeo

TL;DR
This paper introduces a novel 3D color space classification method for asteroids using SDSS data, employing machine learning to improve taxonomic boundaries and discrimination over previous 2D approaches.
Contribution
The study develops a new 3D color space classification scheme with machine learning, enhancing asteroid taxonomy accuracy and scalability compared to prior 2D methods.
Findings
Successfully separated seven asteroid taxonomic types
Clear boundaries identified in 3D color space
Enhanced discrimination over existing systems
Abstract
The taxonomic classification of asteroids has been mostly based on spectroscopic observations with wavelengths spanning from the VIS to the NIR. VIS-NIR spectra of 2500 asteroids have been obtained since the 1970s; the SDSS MOC 4 was released with 4 10 measurements of asteroid positions and colors in the early 2000s. A number of works then devised methods to classify these data within the framework of existing taxonomic systems. Some of these works, however, used 2D parameter space that displayed a continuous distribution of clouds of data points resulting in boundaries that were artificially defined. We introduce here a more advanced method to classify asteroids based on existing systems. This approach is simply represented by a triplet of SDSS colors. The distributions and memberships of each taxonomic type are determined by machine learning methods in the…
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Taxonomy
TopicsIsotope Analysis in Ecology · Spectroscopy and Chemometric Analyses · Astro and Planetary Science
