Automatically Detecting Bystanders in Photos to Reduce Privacy Risks

Rakibul Hasan, David J. Crandall, Mario Fritz, Apu Kapadia
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引用次数: 45

Abstract

Photographs taken in public places often contain bystanders - people who are not the main subject of a photo. These photos, when shared online, can reach a large number of viewers and potentially undermine the bystanders’ privacy. Furthermore, recent developments in computer vision and machine learning can be used by online platforms to identify and track individuals. To combat this problem, researchers have proposed technical solutions that require bystanders to be proactive and use specific devices or applications to broadcast their privacy policy and identifying information to locate them in an image.We explore the prospect of a different approach – identifying bystanders solely based on the visual information present in an image. Through an online user study, we catalog the rationale humans use to classify subjects and bystanders in an image, and systematically validate a set of intuitive concepts (such as intentionally posing for a photo) that can be used to automatically identify bystanders. Using image data, we infer those concepts and then use them to train several classifier models. We extensively evaluate the models and compare them with human raters. On our initial dataset, with a 10-fold cross validation, our best model achieves a mean detection accuracy of 93% for images when human raters have 100% agreement on the class label and 80% when the agreement is only 67%. We validate this model on a completely different dataset and achieve similar results, demonstrating that our model generalizes well.
自动检测旁观者的照片,以减少隐私风险
在公共场所拍摄的照片通常有旁观者——不是照片的主要对象的人。这些照片在网上分享时,可以接触到大量的观众,并有可能破坏旁观者的隐私。此外,计算机视觉和机器学习的最新发展可以被在线平台用于识别和跟踪个人。为了解决这个问题,研究人员提出了技术解决方案,要求旁观者积极主动,使用特定的设备或应用程序来广播他们的隐私政策和识别信息,以便在图像中定位他们。我们探索了一种不同方法的前景——仅仅根据图像中的视觉信息来识别旁观者。通过一项在线用户研究,我们对人类用于对图像中的受试者和旁观者进行分类的基本原理进行了分类,并系统地验证了一组可用于自动识别旁观者的直观概念(例如故意摆姿势拍照)。使用图像数据,我们推断出这些概念,然后使用它们来训练几个分类器模型。我们对这些模型进行了广泛的评估,并将它们与人类评分者进行了比较。在我们的初始数据集上,通过10倍交叉验证,当人类评分者对类别标签的一致性达到100%时,我们的最佳模型的平均检测准确率为93%,当一致性仅为67%时,我们的平均检测准确率为80%。我们在一个完全不同的数据集上验证了这个模型,得到了类似的结果,表明我们的模型泛化得很好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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