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Rights protection of trajectory datasets with nearest-neighbor preservation

机译:保留最近邻的轨迹数据集的权限保护

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Companies frequently outsource datasets to mining firms, and academic institutions create repositories or share datasets in the interest of promoting research collaboration. Still, many practitioners have reservations about sharing or outsourcing datasets, primarily because of fear of losing the principal rights over the dataset. This work presents a way of convincingly claiming ownership rights over a trajectory dataset, without, at the same time, destroying the salient data-set characteristics, which are important for accurate search operations and data-mining tasks. The digital watermarking methodology that we present distorts imperceptibly a collection of sequences, effectively embedding a secret key, while retaining as well as possible the neighborhood of each object, which is vital for operations such as similarity search, classification, or clustering. A key contribution in this methodology is a technique for discovering the maximum distortion that still maintains such desirable properties. We demonstrate both analytically and empirically that the proposed data-set marking techniques can withstand a number of attacks (such a translation, rotation, noise addition, etc) and therefore can provide a robust framework for facilitating the secure dissemination of trajectory datasets.
机译:公司经常将数据集外包给采矿公司,而学术机构为了促进研究合作而创建存储库或共享数据集。但是,许多从业人员对共享或外包数据集持保留态度,主要是因为担心失去对数据集的主要权利。这项工作提出了一种令人信服的方法,可以说服您拥有轨迹数据集的所有权,同时又不破坏显着的数据集特征,这对于准确的搜索操作和数据挖掘任务非常重要。我们介绍的数字水印方法会无意中扭曲了一系列的序列,有效地嵌入了一个秘密密钥,同时尽可能保留了每个对象的邻域,这对于诸如相似性搜索,分类或聚类之类的操作至关重要。该方法的关键贡献是发现最大失真的技术,该最大失真仍然保持此类理想特性。我们通过分析和经验证明,提出的数据集标记技术可以抵御多种攻击(例如平移,旋转,噪声添加等),因此可以为促进轨迹数据集的安全分发提供强大的框架。

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