计算机科学
特征提取
边缘计算
服务器
加密
云计算
大数据
延迟(音频)
信息隐私
计算机网络
数据挖掘
人工智能
计算机安全
操作系统
电信
作者
Nazhao Yan,Hang Cheng,Ximeng Liu,Fei Chen,Meiqing Wang
标识
DOI:10.1109/jiot.2023.3292232
摘要
The health-related Internet of Things (IoT) play an irreplaceable role in the collection, analysis, and transmission of medical data. As a device of the health-related IoT, the electroencephalogram (EEG) has long been a powerful tool for physiological and clinical brain research, which contains a wealth of personal information. Due to its rich computational/storage resources, cloud computing is a promising solution to extract the sophisticated feature of massive EEG signals in the age of big data. However, it needs to solve both response latency and privacy leakage. To reduce latency between users and servers while ensuring data privacy, we propose a privacy-preserving feature extraction scheme, called LightPyFE, for EEG signals in the edge computing environment. In this scheme, we design an outsourced computing toolkit, which allows the users to achieve a series of secure integer and floating-point computing operations. During the implementation, LightPyFE can ensure that the users just perform the encryption and decryption operations, where all computing tasks are outsourced to edge servers for specific processing. Theoretical analysis and experimental results have demonstrated that our scheme can successfully achieve privacy-preserving feature extraction for EEG signals, and is practical yet effective.
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