AI RESEARCH

Compression as an Adversarial Amplifier Through Decision Space Reduction

arXiv CS.CV

ArXi:2604.06954v1 Announce Type: new Image compression is a ubiquitous component of modern visual pipelines, routinely applied by social media platforms and resource-constrained systems prior to inference. Despite its prevalence, the impact of compression on adversarial robustness remains poorly understood. We study a previously unexplored adversarial setting in which attacks are applied directly in compressed representations, and show that compression can act as an adversarial amplifier for deep image classifiers.