Two is Better than One: Efficient Ensemble Defense for Robust and Compact Models

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초록

Deep learning-based computer vision systems adopt complex and large architectures to improve performance, yet they face challenges in deployment on resource-constrained mobile and edge devices. To address this issue, model compression techniques such as pruning, quantization, and matrix factorization have been proposed; however, these compressed models are often highly vulnerable to adversarial attacks. We introduce the Efficient Ensemble Defense (EED) technique, which diversifies the compression of a single base model based on different pruning importance scores and enhances ensemble diversity to achieve high adversarial robustness and resource efficiency. EED dynamically determines the number of necessary sub-models during the inference stage, minimizing unnecessary computations while maintaining high robustness. On the CIFAR- 10 and SVHN datasets, EED demonstrated state-of-the-art robustness performance compared to existing adversarial pruning techniques, along with an inference speed improvement of up to 1.86 times. This proves that EED is a powerful defense solution in resource-constrained environments. © 2025 IEEE.

키워드

adversarial defenseadversarial puriningensemble defense
제목
Two is Better than One: Efficient Ensemble Defense for Robust and Compact Models
저자
Jung, YoojinSong, Byung-cheol
DOI
10.1109/CVPR52734.2025.00906
발행일
2025
유형
Proceedings Paper
저널명
Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition
페이지
9696 ~ 9706