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A Lightweight Privacy-Preserving CNN Feature Extraction Framework for Mobile Sensing

机译:一种轻量级隐私保留CNN特征的移动感应提取框架

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摘要

The proliferation of various mobile devices equipped with cameras results in an exponential growth of the amount of images. Recent advances in the deep learning with convolutional neural networks (CNN) have made CNN feature extraction become an effective way to process these images. However, it is still a challenging task to deploy the CNN model on the mobile sensors, which are typically resource-constrained in terms of the storage space, the computing capacity, and the battery life. Although cloud computing has become a popular solution, data security and response latency are always the key issues. Therefore, in this paper, we propose a novel lightweight framework for privacy-preserving CNN feature extraction for mobile sensing based on edge computing. To get the most out of the benefits of CNN with limited physical resources on the mobile sensors, we design a series of secure interaction protocols and utilize two edge servers to collaboratively perform the CNN feature extraction. The proposed scheme allows us to significantly reduce the latency and the overhead of the end devices while preserving privacy. Through theoretical analysis and empirical experiments, we demonstrate the security, effectiveness, and efficiency of our scheme.
机译:配备有摄像机的各种移动设备的增殖导致图像量的指数增长。卷积神经网络(CNN)深入学习的最新进展使CNN特征提取成为处理这些图像的有效方法。然而,在移动传感器上部署CNN模型仍然是一个具有挑战性的任务,这些任务通常在存储空间,计算能力和电池寿命方面资源受到资料。虽然云计算已成为流行的解决方案,但数据安全性和响应延迟始终是关键问题。因此,在本文中,我们提出了一种基于边缘计算的移动感测的隐私保留CNN特征提取的新颖轻量级框架。为了充分利用CNN的有限物理资源在移动传感器上的好处,我们设计了一系列安全的交互协议,并利用了两个边缘服务器来协同执行CNN特征提取。该方案允许我们显着降低终端设备的延迟和开销,同时保留隐私。通过理论分析和实证实验,我们展示了我们计划的安全,有效性和效率。

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