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深度学习和隐私技术在数据驱动软传感器中的相关性的扩展综述。

An Extended Review Concerning the Relevance of Deep Learning and Privacy Techniques for Data-Driven Soft Sensors.

机构信息

Department of Mathematics and Computer Science, Transilvania University of Brasov, 500036 Brașov, Romania.

Department of Research and Technology, Siemens Industry Software, 500203 Brașov, Romania.

出版信息

Sensors (Basel). 2022 Dec 27;23(1):294. doi: 10.3390/s23010294.

Abstract

The continuously increasing number of mobile devices actively being used in the world amounted to approximately 6.8 billion by 2022. Consequently, this implies a substantial increase in the amount of personal data collected, transported, processed, and stored. The authors of this paper designed and implemented an integrated personal health data management system, which considers data-driven software and hardware sensors, comprehensive data privacy techniques, and machine-learning-based algorithmic models. It was determined that there are very few relevant and complete surveys concerning this specific problem. Therefore, the current scientific research was considered, and this paper comprehensively analyzes the importance of deep learning techniques that are applied to the overall management of data collected by data-driven soft sensors. This survey considers aspects that are related to demographics, health and body parameters, and human activity and behaviour pattern detection. Additionally, the relatively complex problem of designing and implementing data privacy mechanisms, while ensuring efficient data access, is also discussed, and the relevant metrics are presented. The paper concludes by presenting the most important open research questions and challenges. The paper provides a comprehensive and thorough scientific literature survey, which is useful for any researcher or practitioner in the scope of data-driven soft sensors and privacy techniques, in relation to the relevant machine-learning-based models.

摘要

到 2022 年,全球活跃使用的移动设备数量持续增加,达到约 68 亿部。因此,这意味着个人数据的收集、传输、处理和存储量将大幅增加。本文作者设计并实现了一个集成的个人健康数据管理系统,该系统考虑了数据驱动的软件和硬件传感器、全面的数据隐私技术以及基于机器学习的算法模型。研究人员发现,针对这一特定问题的相关且完整的调查很少。因此,考虑到这一点,本文全面分析了深度学习技术在数据驱动的软传感器收集的数据的整体管理中的重要性。本调查考虑了与人口统计、健康和身体参数以及人类活动和行为模式检测相关的方面。此外,还讨论了设计和实施数据隐私机制的相对复杂问题,同时确保了高效的数据访问,并提出了相关的度量标准。本文最后提出了最重要的开放性研究问题和挑战。本文提供了一个全面而深入的科学文献调查,对于数据驱动的软传感器和隐私技术领域的任何研究人员或从业者,以及相关的基于机器学习的模型,都具有参考价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6be/9824402/76c1b0cf7605/sensors-23-00294-g001.jpg

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