Co-salient object detection (CoSOD) has recently achieved significant progress and played a key role in retrieval-related tasks. However, it inevitably poses an entirely new safety and security issue, i.e., highly personal and sensitive content can potentially be extracting by powerful CoSOD methods. In this paper, we address this problem from the perspective of adversarial attacks and identify a novel task: adversarial co-saliency attack. Specially, given an image selected from a group of images containing some common and salient objects, we aim to generate an adversarial version that can mislead CoSOD methods to predict incorrect co-salient regions. Note that, compared with general white-box adversarial attacks for classification, this new task faces two additional challenges: (1) low success rate due to the diverse appearance of images in the group; (2) low transferability across CoSOD methods due to the considerable difference between CoSOD pipelines. To address these challenges, we propose the very first black-box joint adversarial exposure and noise attack (Jadena), where we jointly and locally tune the exposure and additive perturbations of the image according to a newly designed high-feature-level contrast-sensitive loss function. Our method, without any information on the state-of-the-art CoSOD methods, leads to significant performance degradation on various co-saliency detection datasets and makes the co-salient objects undetectable. This can have strong practical benefits in properly securing the large number of personal photos currently shared on the Internet. Moreover, our method is potential to be utilized as a metric for evaluating the robustness of CoSOD methods.
翻译:共振天体探测(COSOD)最近取得了显著进展,在检索相关任务方面发挥了关键作用。然而,它不可避免地提出了全新的安全和安保问题,即高个人和敏感内容有可能通过强大的COSOD方法提取。在本文件中,我们从对抗性攻击的角度来解决这一问题,并确定了一个新的任务:对抗性共同认知攻击。鉴于从一组含有一些共同和突出对象的图像中挑选出来的图像,我们特别希望产生一个对抗性版本,可以误导COSOD方法来预测不正确的共振区域。注意到,与一般白箱对抗性攻击分类相比,高个人和敏感内容可能会被强大的COOD方法所利用。 与一般白箱对立性攻击相比,这一新任务面临另外两个挑战:(1) 由于集团中图像的外观不同,成功率较低;(2) 由于COSODD管道之间的巨大差异很大,COD方法的跨度转移能力较低。为了应对这些挑战,我们建议首先采用黑箱联合对抗性对抗性接触和噪音攻击(Jadena),我们共同和当地对图像的不准确度进行精确的曝光和添加,而无需对图像进行精确的重振动。根据新设计的高分辨率检测,我们所设计的高度检测方法使用了一种高度检测方法,这种高度的轨道,因此采用了一种高度的对我们的高度检测方法。