Internet of Things and People Research Center, Department of Computer Science and Media Technology, Malmö University, 20506 Malmö, Sweden.
Sensors (Basel). 2019 Jan 24;19(3):477. doi: 10.3390/s19030477.
Although the availability of sensor data is becoming prevalent across many domains, it still remains a challenge to make sense of the sensor data in an efficient and effective manner in order to provide users with relevant services. The concept of virtual sensors provides a step towards this goal, however they are often used to denote homogeneous types of data, generally retrieved from a predetermined group of sensors. The DIVS (Dynamic Intelligent Virtual Sensors) concept was introduced in previous work to extend and generalize the notion of a virtual sensor to a dynamic setting with heterogenous sensors. This paper introduces a refined version of the DIVS concept by integrating an interactive machine learning mechanism, which enables the system to take input from both the user and the physical world. The paper empirically validates some of the properties of the DIVS concept. In particular, we are concerned with the distribution of different budget allocations for labelled data, as well as proactive labelling user strategies. We report on results suggesting that a relatively good accuracy can be achieved despite a limited budget in an environment with dynamic sensor availability, while proactive labeling ensures further improvements in performance.
尽管传感器数据的可用性在许多领域变得越来越普遍,但要高效、有效地理解传感器数据,以便为用户提供相关服务,仍然是一项挑战。虚拟传感器的概念为此提供了一个步骤,但是它们通常用于表示同质类型的数据,通常从预定的一组传感器中检索到。在以前的工作中引入了 DIVS(Dynamic Intelligent Virtual Sensors)概念,以将虚拟传感器的概念扩展和推广到具有异构传感器的动态环境中。本文通过集成交互式机器学习机制,对 DIVS 概念进行了改进,该机制使系统能够接收来自用户和物理世界的输入。本文通过实验验证了 DIVS 概念的一些特性。特别是,我们关注的是不同标记数据分配的分配预算,以及主动标记用户策略。我们报告的结果表明,尽管在具有动态传感器可用性的环境中预算有限,但仍可以实现相对较高的准确性,而主动标记可以确保进一步提高性能。