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A Practical Evaluation of Information Processing and Abstraction Techniques for the Internet of Things

机译:物联网信息处理和抽象技术的实践评估

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The term Internet of Things (IoT) refers to the interaction and communication between billions of devices that produce and exchange data related to real-world objects (i.e. things). Extracting higher level information from the raw sensory data captured by the devices and representing this data as machine-interpretable or human-understandable information has several interesting applications. Deriving raw data into higher level information representations demands mechanisms to find, extract, and characterize meaningful abstractions from the raw data. This meaningful abstractions then have to be presented in a human and/or machine-understandable representation. However, the heterogeneity of the data originated from different sensor devices and application scenarios such as e-health, environmental monitoring, and smart home applications, and the dynamic nature of sensor data make it difficult to apply only one particular information processing technique to the underlying data. A considerable amount of methods from machine-learning, the semantic web, as well as pattern and data mining have been used to abstract from sensor observations to information representations. This paper provides a survey of the requirements and solutions and describes challenges in the area of information abstraction and presents an efficient workflow to extract meaningful information from raw sensor data based on the current state-of-the-art in this area. This paper also identifies research directions at the edge of information abstraction for sensor data. To ease the understanding of the abstraction workflow process, we introduce a software toolkit that implements the introduced techniques and motivates to apply them on various data sets.
机译:物联网(IoT)一词是指数十亿个设备之间的交互和通讯,这些设备产生并交换与现实世界对象(即事物)相关的数据。从设备捕获的原始感官数据中提取更高级别的信息,并将其表示为机器可解释或人类可理解的信息,具有许多有趣的应用。将原始数据导出到更高级别的信息表示中,需要一种机制来查找,提取和表征原始数据中有意义的抽象。然后,必须以人类和/或机器可理解的表示形式来呈现这种有意义的抽象。但是,数据的异质性来自于不同的传感器设备和应用程序场景,例如电子医疗,环境监控和智能家居应用程序,并且传感器数据的动态性质使其难以仅将一种特定的信息处理技术应用于基础数据。来自机器学习,语义网以及模式和数据挖掘的大量方法已用于从传感器观察到信息表示的抽象。本文提供了对需求和解决方案的调查,并描述了信息抽象领域中的挑战,并提出了一种有效的工作流程,可以基于该领域的最新技术从原始传感器数据中提取有意义的信息。本文还确定了传感器数据信息抽象边缘的研究方向。为了简化对抽象工作流程过程的理解,我们引入了一个软件工具箱,该工具箱实现了所介绍的技术并将其应用于各种数据集。

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