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2024-09-28 07:53:24

expired found date

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Open Graph

title

description

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site name

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updated

2026-02-27 22:30:09

raw text

CVPR 2024 Workshop Home Dates Speakers Organizers Call Challenge Sponsors Committee The 4th Workshop of Adversarial Machine Learning on Computer Vision: Robustness of Foundation Models The IEEE/CVF Conference on Computer Vision and Pattern Recognition. Jun 17-21, 2024. Seatle WA, USA Overview Artificial intelligence (AI) has entered a new era with the emergence of foundation models (FMs). These models demonstrate powerful generative capabilities by leveraging extensive model parameters and training data, which have become a dominant force in computer vision, revolutionizing a wide range of applications. Alongside their potential benefits, the increasing reliance on FMs has also exposed their vulnerabilities to adversarial attacks. These malicious attacks involve applying imperceptible perturbations to input images or prompts, which can cause the models to misclassify the objects or generate adversary-in...

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