DeepAdversaries: Examining the Robustness of Deep Learning Models for Galaxy Morphology Classification
Aleksandra \'Ciprijanovi\'c, Diana Kafkes, Gregory Snyder, F. Javier, S\'anchez, Gabriel Nathan Perdue, Kevin Pedro, Brian Nord, Sandeep Madireddy,, Stefan M. Wild

TL;DR
This paper investigates the robustness of deep learning models for galaxy morphology classification against data perturbations like noise and adversarial attacks, demonstrating that domain adaptation significantly improves model resilience and accuracy.
Contribution
The study systematically evaluates the impact of observational and processing noise on galaxy classification models and shows that domain adaptation enhances robustness against these perturbations.
Findings
Perturbations can cause misclassification in galaxy morphology models.
Higher observational noise reduces classification accuracy.
Domain adaptation improves robustness and increases latent space distance.
Abstract
With increased adoption of supervised deep learning methods for processing and analysis of cosmological survey data, the assessment of data perturbation effects (that can naturally occur in the data processing and analysis pipelines) and the development of methods that increase model robustness are increasingly important. In the context of morphological classification of galaxies, we study the effects of perturbations in imaging data. In particular, we examine the consequences of using neural networks when training on baseline data and testing on perturbed data. We consider perturbations associated with two primary sources: 1) increased observational noise as represented by higher levels of Poisson noise and 2) data processing noise incurred by steps such as image compression or telescope errors as represented by one-pixel adversarial attacks. We also test the efficacy of domain…
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Taxonomy
TopicsAdvanced Statistical Methods and Models
MethodsFLIP
