论文标题
保守的飞机在混合现实中发布空间隐私保护
Conservative Plane Releasing for Spatial Privacy Protection in Mixed Reality
论文作者
论文摘要
增强现实(AR)或混合现实(MR)平台需要空间理解以检测对象或表面,通常包括其结构性(即空间几何形状)和光度法(例如颜色和纹理)属性,以使应用程序放置在现实世界对象上的虚拟或综合对象,以放置虚拟或合成对象;在某些情况下,即使允许物理和虚拟对象之间的相互作用。这些功能要求AR/MR平台以高分辨率和频率捕获3D空间信息。但是,这些对用户隐私构成了前所未有的风险。除了检测到对象外,空间信息还揭示了用户特异性高的位置,例如用户在哪一部分中。在这项工作中,我们建议利用空间概括,并保守发行,以在维护数据实用程序的同时提供空间隐私。我们设计了一个对手,该对手在现有位置和形状识别方法上建立在3D数据上,作为攻击者,可以评估所提出的空间隐私方法。然后,我们模拟了空间内的用户移动,这在使用Microsoft Hololens收集的3D点云中移动时揭示了更多的空间。结果表明,揭示不超过11层的广义平面 - 从持续揭示的足够大的半径(即$ r \ r \ leq10m $ $)中耗尽,这可能会使对手失败至少一半的时间来识别用户的空间位置。此外,如果累积的空间的半径较小,即每个连续揭示的空间为$ r \ r \ leq 1.50万美元,我们可以释放多达29架广义飞机,同时既享受更好的数据实用程序又可以释放。
Augmented reality (AR) or mixed reality (MR) platforms require spatial understanding to detect objects or surfaces, often including their structural (i.e. spatial geometry) and photometric (e.g. color, and texture) attributes, to allow applications to place virtual or synthetic objects seemingly "anchored" on to real world objects; in some cases, even allowing interactions between the physical and virtual objects. These functionalities require AR/MR platforms to capture the 3D spatial information with high resolution and frequency; however, these pose unprecedented risks to user privacy. Aside from objects being detected, spatial information also reveals the location of the user with high specificity, e.g. in which part of the house the user is. In this work, we propose to leverage spatial generalizations coupled with conservative releasing to provide spatial privacy while maintaining data utility. We designed an adversary that builds up on existing place and shape recognition methods over 3D data as attackers to which the proposed spatial privacy approach can be evaluated against. Then, we simulate user movement within spaces which reveals more of their space as they move around utilizing 3D point clouds collected from Microsoft HoloLens. Results show that revealing no more than 11 generalized planes--accumulated from successively revealed spaces with large enough radius, i.e. $r\leq1.0m$--can make an adversary fail in identifying the spatial location of the user for at least half of the time. Furthermore, if the accumulated spaces are of smaller radius, i.e. each successively revealed space is $r\leq 0.5m$, we can release up to 29 generalized planes while enjoying both better data utility and privacy.