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Stealthy Porn: Understanding Real-World Adversarial Images for Illicit Online Promotion

机译:隐身色情:了解非法在线促销的真实对抗性图像

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Recent years have witnessed the rapid progress in deep learning (DP), which also brings their potential weaknesses to the spotlights of security and machine learning studies. With important discoveries made by adversarial learning research, surprisingly little attention, however, has been paid to the real-world adversarial techniques deployed by the cybercriminal to evade image-based detection. Unlike the adversarial examples that induce misclassification using nearly imperceivable perturbation, real-world adversarial images tend to be less optimal yet equally effective. As a first step to understand the threat, we report in the paper a study on adversarial promotional porn images (APPIs) that are extensively used in underground advertising. We show that the adversary today's strategically constructs the APPIs to evade explicit content detection while still preserving their sexual appeal, even though the distortions and noise introduced are clearly observable to humans. To understand such real-world adversarial images and the underground business behind them, we develop a novel DP-based methodology called Male`na, which focuses on the regions of an image where sexual content is least obfuscated and therefore visible to the target audience of a promotion. Using this technique, we have discovered over 4,000 APPIs from 4,042,690 images crawled from popular social media, and further brought to light the unique techniques they use to evade popular explicit content detectors (e.g., Google Cloud Vision API, Yahoo Open NSFW model), and the reason that these techniques work. Also studied are the ecosystem of such illicit promotions, including the obfuscated contacts advertised through those images, compromised accounts used to disseminate them, and large APPI campaigns involving thousands of images. Another interesting finding is the apparent attempt made by cybercriminals to steal others' images for their advertising. The study highlights the importance of the research on real-world adversarial learning and makes the first step towards mitigating the threats it poses.
机译:近年来见证了深度学习(DP)的快速进展,这也为安全和机器学习研究的聚光带来了潜在的弱点。由于对抗性学习研究的重要发现,令人惊讶地注意到令人惊讶的是,对于由网络犯罪分子部署的现实世界对抗技术来说,令人惊讶地注意到避免基于图像的图像的检测。与使用几乎允许的扰动诱导错误分类的对抗性实例不同,现实世界的对抗性图像往往不太优于且同样有效。作为了解威胁的第一步,我们在论文中报告了对地下广告广泛使用的对抗性促销色情图像(APPIS)的研究。我们认为,今天的战略性地构建了APPIS,以逃避显式内容检测,同时仍然保持其性吸引力,即使介绍的扭曲和噪音对人类显而易见。要了解这些现实世界的对抗性图像和背后的地下业务,我们开发了一种名为Male`na的新型DP方法,该方法侧重于图像的地区,其中性含量最不混淆,因此对目标受众可见促销。使用这种技术,我们发现了超过4,04,690张图片的4,000个Appis,并进一步阐明了他们用于逃避流行的明确内容探测器的独特技术(例如,Google Cloud Vision API,雅虎开放NSFW模型),以及这些技术工作的原因。还研究了这种非法促销的生态系统,包括通过这些图像宣传的混淆联系,受到用于传播它们的账户,以及涉及数千种图像的大型Appi活动。另一个有趣的发现是网络犯罪分子所做的明显尝试,为他们的广告窃取别人的图像。该研究突出了对现实世界对抗性学习研究的重要性,并使第一步迈向缓解它姿势的威胁。

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