主题演讲:从个人和空间环境到社会和社区环境的人群感知时代的环境感知计算

Daqing Zhang
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引用次数: 5

摘要

自1994年Schilit和Theimer对上下文感知的开创性工作以来,上下文感知计算领域的研究取得了很大进展。由于传感器和设备的部署规模有限,早期的环境感知计算主要集中在单个智能空间中对个人环境的理解和利用。随着近年来配备传感器的移动电话的爆炸式增长,互联网和社交网络服务的惊人增长,全球定位系统(GPS)在各类公共交通中的广泛应用,以及传感器网络和WiFi在室内和室外环境中的广泛部署,人们在与网络物理空间互动时留下的数字足迹正在以前所未有的速度和规模积累。人群感知的技术趋势为上下文感知计算带来了新的挑战和机遇——来自不同数据源的海量、大规模、多模式、不同粒度、不同质量的数据。在这次演讲中,我将介绍一个新的研究方向,即“社会和社区智能(SCI)”,作为群体感知时代上下文感知计算的自然延伸,重点是提取社区和社会层面的上下文;我将特别介绍我们在挖掘大规模出租车GPS数据、移动电话数据和社交媒体数据方面的工作,以便在智能城市中实现创新应用。最后简要总结了传统情境感知计算与SCI在数据采集、建模、推理、存储和情境推断等方面的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Keynote: Context-aware computing in the era of crowd sensing from personal and space context to social and community context
Since the seminal work of Schilit and Theimer on context-awareness in 1994, great research progress has been made in context-aware computing field. Due to limited deployment scale of sensors and devices, in early years context-aware computing focused mainly on understanding and exploiting personal context in single smart spaces. As a result of the recent explosion of sensor-equipped mobile phones, the phenomenal growth of Internet and social network services, the broader use of the Global Positioning System (GPS) in all types of public transportation, and the extensive deployment of sensor network and WiFi in both indoor and outdoor environments, the digital footprints left by people while interacting with cyber-physical spaces are accumulating with an unprecedented speed and scale. The technology trend towards crowd sensing is creating new challenges and opportunities for context-aware computing - with huge amount, large scale, multi-modal, different granularity, diverse quality of data from various data sources. In this talk, I will present a new research direction called “social and community intelligence (SCI)” as a natural extension of context-aware computing in the era of crowd sensing, with emphasis on extracting community and society level context; in particular I will introduce our work in mining large scale taxi GPS data, mobile phone data and social media data for enabling innovative applications in smart cities. Finally I will briefly summarize the difference between traditional context-aware computing and SCI in terms of data acquisition, modeling, inference, storage and context inferred.
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