A Square Attack test was performed on swinv2-large-patch4-window12to16-192to256-22kto1k-ft
, in which
a 40% failure rate was observed.
In at least one case, the model's prediction changed -0.51. This caused the label to change from 803 to 915.
This test measures the robustness of the model to Square attacks. It does this by taking a sample input, applying a Square attack, and measuring the performance of the model on the perturbed input. See the paper "Square Attack: a query-efficient black-box adversarial attack via random search" by Andriushchenko, Croce, et al. (https://arxiv.org/abs/1912.00049) for more details.
Malicious actors can perturb input images to alter model behavior in unexpected ways. It is important that Computer Vision models are robust to such attacks.
swinv2-large-patch4-window12to16-192to256-22kto1k-ft
pkg:huggingface/microsoft/swinv2-large-patch4-window12to16-192to256-22kto1k-ft@a4fd55aade86349731fef059b2632d5bf8b3011c
This report was automatically generated by the scanning engine rime-0.21.0rc4.post195+git.2a88076b.d
on 2023-01-12 17:49.