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Aggregating Sensing Data for Mobile Crowdsourcing
The Hong Kong University of Science and Technology Department of Computer Science and Engineering PhD Thesis Defence Title: "Aggregating Sensing Data for Mobile Crowdsourcing" By Mr. Xinglin ZHANG Abstract Mobile crowdsourcing applications are becoming more and more prevalent in recent years, as smartphones equipped with various built-in sensors are proliferating rapidly. The large quantity of potential sensing data stimulates researchers to probe into large-scale tasks that used to be costly or impossible, such as noise pollution monitoring and traffic surveillance. Yet the efficient aggregation of the crowdsourced data, which is of essential importance for such sensing tasks, has not received sufficient attention. Specifically, we investigate the following crucial challenges of data aggregation in this thesis: how to motivate normal users to contribute sensing data and how to conduct robust inference from sensing data. The low participation level of smartphone users due to various resource consumptions, such as time and power, remains a hurdle that prevents the enjoyment brought by crowd sensing applications. Recently, some researchers have done pioneer works in motivating users to contribute their resources by designing incentive mechanisms, which are able to provide certain rewards for participation. However, none of these works considered smartphone users nature of opportunistically occurring in the area of interest. Specifically, for a general smartphone sensing application, the platform would distribute tasks to each user on her arrival and has to make an immediate decision according to the user's reply. To accommodate this general setting, we propose to design online incentive mechanisms based on online reverse auction. On the other hand, the low-quality crowdsourced data are prone to containing outliers that may severely impair the mobile crowdsourcing applications. Thus in this thesis, we conduct pioneer investigation considering crowdsourced data quality. Specifically, we focus on estimating user motion trajectory information, which plays an essential role in multiple crowdsourcing applications, such as indoor localization, context recognition, indoor navigation, etc. We resort to the family of robust statistics and design a robust trajectory estimation scheme, which is capable of alleviating the negative influence of abnormal crowdsourced user trajectories, differentiating normal users from abnormal users, and overcoming the challenge brought by spatial imbalance of crowdsourced trajectories. Most of mobile sensing applications rely on inference components heavily for detecting interesting activities or contexts. Existing work implements inference components using traditional models designed for balanced data sets, where the sizes of interesting (positive) and non-interesting (negative) data are comparable. Practically, however, the positive and negative sensing data are highly imbalanced. Therefore, we propose a new inference framework SLIM based on several machine learning techniques in order to accommodate the imbalanced nature of sensing data. Theoretic properties of the designed methods are analyzed. Also, thorough simulations and experiments are conducted to further verify the efficiency of these methods in aggregating sensing data for mobile crowdsourcing applications. Date: Thursday, 10 July 2014 Time: 1:00pm - 3:00pm Venue: Room 3501 Lifts 25/26 Chairman: Prof. Chun Man CHAN (CIVL) Committee Members: Prof. Lei Chen (Supervisor) Prof. Cunsheng Ding Prof. Pan Hui Prof. Jialin Yu (FINA) Prof. Jiannong Cao (Comp., PolyU) **** ALL are Welcome ****