首页> 外文会议>IEEE 35th Annual IEEE International Conference on Computer Communications >Catch me in the dark: Effective privacy-preserving outsourcing of feature extractions over image data
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Catch me in the dark: Effective privacy-preserving outsourcing of feature extractions over image data

机译:让我陷入黑暗:有效的保护隐私的外包功能,用于提取图像数据

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Advances in cloud computing have greatly motivated data owners to outsource their huge amount of personal multimedia data and/or computationally expensive tasks onto the semi-trusted cloud by leveraging its abundant resources for cost saving and flexibility. From the privacy perspective, however, the outsourced multimedia data and its originated applications may reveal the data owner's private information, such as the personal identity, locations or even financial profiles. This observation has recently aroused new research interest on privacy-preserving computations over outsourced multimedia data. In this paper, we propose an effective privacy-preserving computation outsourcing protocol for the prevailing scale-invariant feature transform (SIFT) over massive encrypted image data. We first show that previous solutions to this problem have either efficiency/security or practicality issues, and none can well preserve the important characteristics of the original SIFT in terms of distinctiveness and robustness. We for the first time present a new privacy-preserving outsourcing protocol for SIFT with the preservation of its key characteristics, by randomly splitting the original image data, carefully distributing the feature extraction computations to two independent cloud servers and further leveraging the garbled circuit for secure keypoints comparisons. We both carefully analyze and extensively evaluate the security and effectiveness of our design. The results show that our solution is practically secure, outperforms the state-of-the-art and performs comparably to the original SIFT in terms of various characteristics, including rotation invariance, image scale invariance, robust matching across affine distortion and change in 3D viewpoint.
机译:云计算的进步极大地激励了数据所有者,通过利用其丰富的资源来节省成本和提高灵活性,将其大量的个人多媒体数据和/或计算上昂贵的任务外包给半信任的云。但是,从隐私角度来看,外包的多媒体数据及其原始应用程序可能会泄露数据所有者的私人信息,例如个人身份,位置甚至财务状况。该观察最近引起了对外包多媒体数据上的隐私保护计算的新研究兴趣。在本文中,我们提出了一种有效的隐私保护计算外包协议,适用于大规模海量加密图像数据上的主流尺度不变特征变换(SIFT)。我们首先表明,该问题的先前解决方案具有效率/安全性或实用性问题,并且在独特性和鲁棒性方面都无法很好地保留原始SIFT的重要特征。我们首次为SIFT提出了一种新的隐私保护外包协议,该协议保留了其关键特征,方法是随机分割原始图像数据,将特征提取计算小心地分布到两个独立的云服务器,并进一步利用乱码电路来确保安全关键点比较。我们都会仔细分析并广泛评估设计的安全性和有效性。结果表明,我们的解决方案实际上是安全的,性能优于现有技术,并且在各种特性(包括旋转不变性,图像尺度不变性,仿射失真的鲁棒匹配以及3D视点变化)方面与原始SIFT相当。 。

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