Current adversarial attacks for motion estimation (optical flow) optimize small per-pixel perturbations, which are unlikely to appear in the real world. In contrast, we exploit a real-world weather phenomenon for a novel attack with adversarially optimized snow. At the core of our attack is a differentiable renderer that consistently integrates photorealistic snowflakes with realistic motion into the 3D scene. Through optimization we obtain adversarial snow that significantly impacts the optical flow while being indistinguishable from ordinary snow. Surprisingly, the impact of our novel attack is largest on methods that previously showed a high robustness to small L_p perturbations.
翻译:目前运动估计(光流)的对抗性攻击优化了极小的每像素扰动,这在现实世界中不可能出现。相反,我们利用现实世界的天气现象来用对抗性优化的雪来进行新颖的攻击。我们攻击的核心是一个可区别的制造者,它始终将光现实的雪花与现实的运动结合到3D场景中。我们通过优化获得对光流产生重大影响的对立雪,同时无法与普通雪区分。令人惊讶的是,我们新颖的攻击的影响最大的是以前显示小L_p perturbation高度强大的方法。