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Design Privacy with Analogia Graph

机译:使用Analogia Graph的设计隐私

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摘要

Human vision is often guided by instinctual commonsense such as proportions and contours. In this paper, we explore how to use the proportion as the key knowledge for designing a privacy algorithm that detects human private parts in a 3D scan dataset. The Analogia Graph is introduced to study the proportion of structures. It is a graph-based representation of the proportion knowledge. The intrinsic human proportions are applied to reduce the search space by an order of magnitude. A feature shape template is constructed to match the model data points using Radial Basis Functions in a non-linear regression and the relative measurements of the height and area factors. The method is tested on 100 datasets from CAESAR database. Two surface rendering methods are studied for data privacy: blurring and transparency. It is found that test subjects normally prefer to have the most possible privacy in both rendering methods. However, the subjects adjusted their privacy measurement to a certain degree as they were informed the context of security.
机译:人的视觉通常受本能常识(例如比例和轮廓)的指导。在本文中,我们探索如何使用比例作为设计3D扫描数据集中检测人的私人部位的隐私算法的关键知识。引入类比图来研究结构的比例。它是比例知识的基于图的表示形式。内在的人类比例被应用来减少搜索空间一个数量级。构造特征形状模板以使用非线性回归中的径向基函数以及高度和面积因子的相对测量值来匹配模型数据点。该方法在来自CAESAR数据库的100个数据集上进行了测试。为了保护数据隐私,研究了两种表面渲染方法:模糊和透明。发现测试对象通常更喜欢在两种渲染方法中都具有最大可能的隐私性。然而,当受试者被告知安全背景时,他们在一定程度上调整了他们的隐私度量。

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