PRISM-Guardian: Enhancing Data Privacy in Devices With Sound Collection, Recognition, and Sharing Through Blockchain Technology

IF 2.2 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Sensors Letters Pub Date : 2024-10-16 DOI:10.1109/LSENS.2024.3482177
Edilson Filho;Matheus Ferreira;Gabriel Palitot;César Marcon;Laurent Vercouter;Jarbas Silveira
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Abstract

The proliferation of voice-activated devices, such as virtual assistants and voice-controlled systems, has changed how people interact with technology and the environment. These devices collect data that can be sent to servers to process sound, returning responses or suggestions to the user. However, the widespread use of these devices has led to intensive data collection, exposing sensitive information, such as conversations and intimate audio. In this context, we developed PRISM-guardian, a technique for sharing and tracking sound data without revealing its origin, thus preserving privacy. Transparently, audio generators, such as residential users, can track who accessed their information and why. We collected 1000 audio samples, each lasting 10 s, to recognize short-duration cough and sneeze sounds. We achieved average sound recognition processing times of 3.78 s, 6.78 ms to encapsulate the data in the API, and an average of 48 ms to save the data on the blockchain. Besides, we present a mathematical formalization of PRISM and conduct tests to identify the origin of the sound. The results showed that the identity of the sound source is preserved while this source can view and track the data.
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PRISM-Guardian:通过区块链技术加强声音收集、识别和共享设备中的数据隐私
虚拟助手和声控系统等声控设备的普及改变了人们与技术和环境的交互方式。这些设备收集的数据可以发送到服务器进行声音处理,并向用户返回回复或建议。然而,这些设备的广泛使用导致了密集的数据收集,暴露了敏感信息,如对话和私密音频。在这种情况下,我们开发了 PRISM-guardian,这是一种共享和跟踪声音数据的技术,不会泄露其来源,从而保护了隐私。音频生成者(如住宅用户)可以透明地跟踪谁访问了他们的信息以及访问的原因。我们收集了 1000 个音频样本,每个样本持续 10 秒,用于识别短时咳嗽声和喷嚏声。我们识别声音的平均处理时间为 3.78 秒,将数据封装到应用程序接口的平均处理时间为 6.78 毫秒,将数据保存到区块链的平均处理时间为 48 毫秒。此外,我们还提出了 PRISM 的数学形式化,并进行了识别声音来源的测试。结果表明,声音来源的身份得以保留,同时该来源可以查看和跟踪数据。
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来源期刊
IEEE Sensors Letters
IEEE Sensors Letters Engineering-Electrical and Electronic Engineering
CiteScore
3.50
自引率
7.10%
发文量
194
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