A Survey of Approaches to Unobtrusive Sensing of Humans

J. Fernandes, J. Silva, A. Rodrigues, F. Boavida
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引用次数: 3

Abstract

The increasing amount of human-related and/or human-originated data in current systems is both an opportunity and a challenge. Nevertheless, despite relying on the processing of large amounts of data, most of the so-called smart systems that we have nowadays merely consider humans as sources of data, not as system beneficiaries or even active “components.” For truly smart systems, we need to create systems that are able to understand human actions and emotions, and take them into account when deciding on the system behavior. Naturally, in order to achieve this, we first have to empower systems with human sensing capabilities, possibly in ways that are as inconspicuous as possible. In this context, in this article we survey existing approaches to unobtrusive monitorization of human beings, namely, of their activity, vital signs, and emotional states. After setting a taxonomy for human sensing, we proceed to present and analyze existing solutions for unobtrusive sensing. Subsequently, we identify and discuss open issues and challenges in this area. Although there are surveys that address some of the concerned fields of research, such as healthcare, human monitorization, or even the use-specific techniques like channel state information or image recognition, as far as we know this is the first comprehensive survey on unobtrusive sensing of human beings.
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非突兀感知人类方法综述
当前系统中与人类相关和/或源自人类的数据数量不断增加,这既是机遇也是挑战。然而,尽管依赖于对大量数据的处理,我们现在拥有的大多数所谓的智能系统仅仅将人类视为数据的来源,而不是系统的受益者,甚至不是主动的“组件”。对于真正的智能系统,我们需要创建能够理解人类行为和情感的系统,并在决定系统行为时将其考虑在内。当然,为了实现这一目标,我们首先必须赋予系统以人类感知能力,可能以尽可能不引人注目的方式。在这种情况下,在本文中,我们调查了现有的不引人注目的监测人类的方法,即他们的活动,生命体征和情绪状态。在为人类感知设置了分类之后,我们继续提出和分析现有的非突兀感知解决方案。随后,我们确定并讨论这一领域的开放性问题和挑战。虽然有一些调查涉及一些相关的研究领域,如医疗保健、人类监控,甚至是特定用途的技术,如通道状态信息或图像识别,但据我们所知,这是第一次关于人类不引人注目的感知的全面调查。
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