Benchmarking Robust Self-Supervised Learning Across Diverse Downstream Tasks
Abstract
Large-scale vision models have become integral in many applications due to their unprecedented performance and versatility across downstream tasks. However, the robustness of these foundation models has primarily been explored for a single task, namely image classification. The vulnerability of other common vision tasks, such as semantic segmentation and depth estimation, remains largely unknown. We present a comprehensive empirical evaluation of the adversarial robustness of self-supervised vision encoders across multiple downstream tasks. Our attacks operate in the encoder embedding space and at the downstream task output level. In both cases, current state-of-the-art adversarial fine-tuning techniques tested only for classification significantly degrade clean and robust performance on other tasks. Since the purpose of a foundation model is to cater to multiple applications at once, our findings reveal the need to enhance encoder robustness more broadly. Our code is available at .
Cite
@article{arxiv.2407.12588,
title = {Benchmarking Robust Self-Supervised Learning Across Diverse Downstream Tasks},
author = {Antoni Kowalczuk and Jan Dubiński and Atiyeh Ashari Ghomi and Yi Sui and George Stein and Jiapeng Wu and Jesse C. Cresswell and Franziska Boenisch and Adam Dziedzic},
journal= {arXiv preprint arXiv:2407.12588},
year = {2024}
}
Comments
Accepted at the ICML 2024 Workshop on Foundation Models in the Wild