You Can't See Me: Providing Privacy in Vision Pipelines via Wi-Fi Localization

Shazal Irshad, Ria Thakkar, Eric Rozner, Eric Wustrow
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引用次数: 0

Abstract

Today, video cameras are ubiquitously deployed. These cameras collect, stream, store, and analyze video footage for a variety of use cases, ranging from surveillance, retail analytics, architectural engineering, and more. At the same time, many citizens are becoming weary of the amount of personal data captured, along with the algorithms and datasets used to process video pipelines. This work investigates how users can opt-out of such pipelines by explicitly providing consent to be recorded. An ideal system should obfuscate or otherwise cleanse non-consenting user data, ideally before a user even enters the video processing pipeline itself. We present a system, called Consent-Box, that enables obfuscation of users without using complex or personally-identifying vision techniques. Instead, a user's location on a video frame is estimated via Wi-Fi localization of a user's mobile device. This estimation allows us to remove individuals from frames before those frames enter complex vision pipelines.
你看不到我:通过Wi-Fi本地化在视觉管道中提供隐私
如今,摄像机无处不在。这些摄像机收集、传输、存储和分析视频片段,用于各种用例,包括监控、零售分析、建筑工程等。与此同时,许多公民开始厌倦了大量的个人数据,以及用于处理视频管道的算法和数据集。这项工作调查了用户如何通过明确表示同意被记录来选择退出这种管道。理想的系统应该混淆或以其他方式清理未经同意的用户数据,理想情况下甚至在用户进入视频处理管道本身之前。我们提出了一个系统,称为“同意盒”,它可以在不使用复杂或个人识别视觉技术的情况下混淆用户。相反,用户在视频帧上的位置是通过用户移动设备的Wi-Fi定位来估计的。这种估计使我们能够在帧进入复杂的视觉管道之前从帧中删除个体。
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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