利用保护性扰动保护隐私的多媒体移动云计算

Zhongze Tang, Mengmei Ye, Yao Liu, Sheng Wei
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引用次数: 0

摘要

移动云计算已被许多多媒体应用所采用,在这些应用中,资源受限的移动设备向远程云服务器发送多媒体数据(如图像),请求计算密集型多媒体服务(如图像识别)。这种基于云的机制虽然大大提高了移动应用的性能,但由于多媒体数据和服务从受信任的用户设备卸载到不受信任的云服务器上,往往会引起隐私问题。最近的一些研究提出了基于扰动的隐私保护机制,这种机制会对卸载的多媒体数据进行混淆,从而在不影响远程多媒体服务功能的情况下消除隐私暴露。然而,现有的隐私保护方法需要在资源有限的移动设备上部署计算密集型扰动生成。此外,经过混淆处理的图像通常不符合标准图像压缩算法,而且会消耗大量带宽。在本文中,我们开发了一种新型隐私保护多媒体移动云计算框架,即$PMC^2$,以解决资源和带宽挑战。PMC^2$利用云中的安全保密计算来部署扰动发生器,从而在解决资源挑战的同时维护了隐私。此外,我们还开发了一种经过专门训练的神经压缩器来压缩扰动图像,以应对带宽挑战。我们在端到端移动云计算系统中实现了$PMC^2$,在此基础上,我们的评估证明了$PMC^2$在保持目标多媒体服务高精确度的同时,实现了卓越的延迟、能效和带宽消耗。
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Privacy-Preserving Multimedia Mobile Cloud Computing Using Protective Perturbation
Mobile cloud computing has been adopted in many multimedia applications, where the resource-constrained mobile device sends multimedia data (e.g., images) to remote cloud servers to request computation-intensive multimedia services (e.g., image recognition). While significantly improving the performance of the mobile applications, the cloud-based mechanism often causes privacy concerns as the multimedia data and services are offloaded from the trusted user device to untrusted cloud servers. Several recent studies have proposed perturbation-based privacy preserving mechanisms, which obfuscate the offloaded multimedia data to eliminate privacy exposures without affecting the functionality of the remote multimedia services. However, the existing privacy protection approaches require the deployment of computation-intensive perturbation generation on the resource-constrained mobile devices. Also, the obfuscated images are typically not compliant with the standard image compression algorithms and suffer from significant bandwidth consumption. In this paper, we develop a novel privacy-preserving multimedia mobile cloud computing framework, namely $PMC^2$, to address the resource and bandwidth challenges. $PMC^2$ employs secure confidential computing in the cloud to deploy the perturbation generator, which addresses the resource challenge while maintaining the privacy. Furthermore, we develop a neural compressor specifically trained to compress the perturbed images in order to address the bandwidth challenge. We implement $PMC^2$ in an end-to-end mobile cloud computing system, based on which our evaluations demonstrate superior latency, power efficiency, and bandwidth consumption achieved by $PMC^2$ while maintaining high accuracy in the target multimedia service.
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