TL;DR
This paper presents an unsupervised anomaly detection method using Wasserstein GANs on nearly one million galaxy images from the Hyper Suprime-Cam survey, identifying various interesting astronomical anomalies.
Contribution
It introduces a novel approach combining WGANs and discriminator-based anomaly scoring, along with a new residual clustering method for characterizing anomalies.
Findings
Discriminator outperforms generator in anomaly detection.
Identified galaxy mergers, tidal features, and star-forming galaxies.
Released a publicly available anomaly catalog and visualization tools.
Abstract
The problem of anomaly detection in astronomical surveys is becoming increasingly important as data sets grow in size. We present the results of an unsupervised anomaly detection method using a Wasserstein generative adversarial network (WGAN) on nearly one million optical galaxy images in the Hyper Suprime-Cam (HSC) survey. The WGAN learns to generate realistic HSC-like galaxies that follow the distribution of the data set; anomalous images are defined based on a poor reconstruction by the generator and outlying features learned by the discriminator. We find that the discriminator is more attuned to potentially interesting anomalies compared to the generator, and compared to a simpler autoencoder-based anomaly detection approach, so we use the discriminator-selected images to construct a high-anomaly sample of 13,000 objects. We propose a new approach to further characterize…
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