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通过加密神经网络推理确保人类行为识别的安全性。

Secure human action recognition by encrypted neural network inference.

机构信息

Department of Mathematics, Hanyang University, Seoul, Republic of Korea.

Department of Computer Science, Hanyang University, Seoul, Republic of Korea.

出版信息

Nat Commun. 2022 Aug 15;13(1):4799. doi: 10.1038/s41467-022-32168-5.

Abstract

Advanced computer vision technology can provide near real-time home monitoring to support "aging in place" by detecting falls and symptoms related to seizures and stroke. Affordable webcams, together with cloud computing services (to run machine learning algorithms), can potentially bring significant social benefits. However, it has not been deployed in practice because of privacy concerns. In this paper, we propose a strategy that uses homomorphic encryption to resolve this dilemma, which guarantees information confidentiality while retaining action detection. Our protocol for secure inference can distinguish falls from activities of daily living with 86.21% sensitivity and 99.14% specificity, with an average inference latency of 1.2 seconds and 2.4 seconds on real-world test datasets using small and large neural nets, respectively. We show that our method enables a 613x speedup over the latency-optimized LoLa and achieves an average of 3.1x throughput increase in secure inference compared to the throughput-optimized nGraph-HE2.

摘要

高级计算机视觉技术可以提供近乎实时的家庭监测,通过检测跌倒和与癫痫发作和中风相关的症状来支持“原地老龄化”。价格实惠的网络摄像头,加上云计算服务(运行机器学习算法),可能会带来重大的社会效益。然而,由于隐私问题,它尚未在实践中部署。在本文中,我们提出了一种使用同态加密来解决这一困境的策略,该策略在保留动作检测的同时保证信息机密性。我们的安全推理协议可以以 86.21%的灵敏度和 99.14%的特异性区分跌倒和日常生活活动,在使用小型和大型神经网络的真实测试数据集上的平均推理延迟分别为 1.2 秒和 2.4 秒。我们表明,与延迟优化的 LoLa 相比,我们的方法使延迟提高了 613 倍,与吞吐量优化的 nGraph-HE2 相比,安全推理的平均吞吐量提高了 3.1 倍。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1eec/9378731/728f140b3583/41467_2022_32168_Fig1_HTML.jpg

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