A Privacy Filter Framework for Internet of Robotic Things Applications

Zahir Alsulaimawi
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引用次数: 1

Abstract

Traditionally robots have been stand-alone systems. In recent years, however, they have increasingly been connected to external knowledge resources through the Internet of Things (IoT). These robots are thus becoming part of IoT and can realistically allocate Internet of Robotic Things (IoRT) technologies. IoRT can facilitate Human-Robot Interaction (HRI) at functional (commanding and programming) and social levels, as well as a means for remote-interaction. IoRT-HRI can cause privacy issues for humans, in part because robots can collect data using IoT and move in the real world, partly because robots can learn to read human social cues and adapt or correct their behavior accordingly. In this paper, we address the topic of privacy-preserving for IoRT- Hri applications. The objective is to design a data release framework called a Privacy Filter (PF) that can prevent an adversary from private mining information from the released data while keeping utility data. In the experiments, we test our framework on two accessible datasets: MNIST (hand-written digits) and UCI-HAR (activity recognition from motion). Our experimental results on these datasets show that PF is highly effective in removing private information from the dataset while allowing utility data to be mined effectively.
机器人物联网应用的隐私过滤框架
传统上,机器人都是独立的系统。然而,近年来,它们越来越多地通过物联网(IoT)与外部知识资源连接。因此,这些机器人正在成为物联网的一部分,并可以实际分配机器人物联网(IoRT)技术。IoRT可以促进人机交互(HRI)在功能(命令和编程)和社会层面,以及远程交互的手段。IoT - hri可能会给人类带来隐私问题,部分原因是机器人可以使用物联网收集数据并在现实世界中移动,部分原因是机器人可以学会解读人类的社交线索,并相应地调整或纠正自己的行为。在本文中,我们讨论了irt - Hri应用的隐私保护问题。目标是设计一个称为隐私过滤器(PF)的数据发布框架,该框架可以防止攻击者在保留实用数据的同时从发布的数据中挖掘信息。在实验中,我们在两个可访问的数据集上测试我们的框架:MNIST(手写数字)和UCI-HAR(来自运动的活动识别)。我们在这些数据集上的实验结果表明,PF在从数据集中去除私有信息方面非常有效,同时允许有效地挖掘实用数据。
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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