Vision-based perception modules are increasingly deployed in many applications, especially autonomous vehicles and intelligent robots. These modules are being used to acquire information about the surroundings and identify obstacles. Hence, accurate detection and classification are essential to reach appropriate decisions and take appropriate and safe actions at all times. Current studies have demonstrated that "printed adversarial attacks", known as physical adversarial attacks, can successfully mislead perception models such as object detectors and image classifiers. However, most of these physical attacks are based on noticeable and eye-catching patterns for generated perturbations making them identifiable/detectable by human eye or in test drives. In this paper, we propose a camera-based inconspicuous adversarial attack (\textbf{AdvRain}) capable of fooling camera-based perception systems over all objects of the same class. Unlike mask based fake-weather attacks that require access to the underlying computing hardware or image memory, our attack is based on emulating the effects of a natural weather condition (i.e., Raindrops) that can be printed on a translucent sticker, which is externally placed over the lens of a camera. To accomplish this, we provide an iterative process based on performing a random search aiming to identify critical positions to make sure that the performed transformation is adversarial for a target classifier. Our transformation is based on blurring predefined parts of the captured image corresponding to the areas covered by the raindrop. We achieve a drop in average model accuracy of more than $45\%$ and $40\%$ on VGG19 for ImageNet and Resnet34 for Caltech-101, respectively, using only $20$ raindrops.
翻译:视觉感知模块越来越多地用于许多应用,特别是自主飞行器和智能机器人。这些模块正被用于获取周围环境的信息和识别障碍。 因此,准确的检测和分类对于做出适当决定和在任何时候都采取适当和安全的行动至关重要。 目前的研究已经表明,“打印对抗性攻击”(称为人身对抗性攻击)能够成功地误导物体探测器和图像分类仪等视觉模型。然而,这些物理袭击大多基于产生扰动的可见和目光捕捉模式,使其为人类眼睛或测试驱动器所识别/检测。在本文件中,我们提出基于相机的不清晰的对抗性攻击(\ textbf{AdvRain})对于在任何时候都能够做出适当的决定和采取适当的安全行动。与基于假天气袭击的面具不同,这种攻击需要获得基本的计算硬件或图像记忆。然而,我们的攻击是基于模拟自然天气状况(即雨滴)的影响,这种影响只能被人类眼睛或测试驱动器所识别。我们用一个透明性粘贴的粘贴剂粘贴在内部的货币对准的对准的对准性对立的对准的对称攻击(trubrealalalal) 的对准的对等图像进行搜索。 将完成一个对准的对准的对准的对准的对准的对准的对准的对准的对等的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的图像的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对准的对路的对准的对准的对准的对准的对准的对准的对准的对准的对路的对路的对准的对准的对准的对准的对路的对准的对准的对准的对准的</s>