Data sensing and gathering is an essential task for various information-driven services in smart cities. On the one hand, Internet of Things (IoT) sensors can be deployed at certain fixed locations to capture data reliably but suffer from limited sensing coverage. On the other hand, data can also be gathered dynamically through crowdsensing contributed by voluntary users but suffer from its unreliability and the lack of incentives for users' contributions. In this paper, we explore an integrated paradigm called "hybrid sensing" that harnesses both IoT-sensing and crowdsensing in a complementary manner. In hybrid sensing, users are incentivized to provide sensing data not covered by IoT sensors and provide crowdsourced feedback to assist in calibrating IoT-sensing. Their contributions will be rewarded with credits that can be redeemed to retrieve synthesized information from the hybrid system. In this paper, we develop a hybrid sensing system that supports explicit user privacy -- IoT sensors are obscured physically to prevent capturing private user data, and users interact with a crowdsensing server via a privacy-preserving protocol to preserve their anonymity. A key application of our system is smart parking, by which users can inquire and find the available parking spaces in outdoor parking lots. We implemented our hybrid sensing system for smart parking and conducted extensive empirical evaluations. Finally, our hybrid sensing system can be potentially applied to other information-driven services in smart cities.
翻译:在智能城市中,各种信息驱动服务的基本任务是数据遥感和收集。一方面,互联网物质传感器可以在某些固定地点部署,以可靠地获取数据,但受有限的遥感覆盖。另一方面,数据也可以通过自愿用户提供的人群监测来动态收集,但数据不可靠,而且缺乏对用户贡献的激励。在本文中,我们探索了一种名为“混合感应”的综合模式,它以互补的方式利用互联网和人群感应。在混合感应中,用户受到激励,提供不受互联网传感器覆盖的感应数据,并提供众源反馈,以协助校准IOT感应。另一方面,数据也可以通过由自愿用户提供的人群监测数据来动态收集,通过人群监测来动态地收集数据。我们开发了一种混合感应系统,支持明确的用户隐私 -- IoT感应器在物理上模糊不清,用户可以通过保密协议与人群感测服务器进行互动,以保持其匿名性。我们系统的关键应用是智能型停车位,我们用户最终可以使用这种系统进行感测并找到其他感应到的移动空间。