More about HKUST
Practical Crowd-sensing Applications with Privacy Protection
PhD Thesis Proposal Defence Title: "Practical Crowd-sensing Applications with Privacy Protection" by Mr. Shanfeng ZHANG Abstract: With the phenomenal growth of smartphones, wearable devices and sensor-quipped vehicles, mobile device users have the ability to acquire local information such as location, traffic conditions, pollution and so on. When the sensing information is share with the cloud where data fusion takes place, a myriad of crowd-sensing applications has appeared, including vehicle navigation, environment monitoring and social networks. However, some topics remain hard to be solved. In this thesis proposal, we address three challenging topics in this area named urban taxi-sharing, emotion detection and location privacy protection. In the first work, we design a QoS-aware taxi-sharing system named QA-Share which allows occupied taxi to pick up new passengers on the fly. By dynamically collecting location information of taxi riders and drivers, QA-Share schedules routines for taxis to reduce waiting time for taxi riders and increase productivity for drivers. In the second work, we propose iSelf, which automatically detects users' emotions in cold-start conditions. iSelf collects usage pattern of smartphones besides location. Given only a few labeled samples, we use transfer learning technology for emotion labeling. In the third work, we present a novel crowd-sensing scheme PLP, which preserves privacy when collecting location information from users. PLP aims to maximizes the amount of location data collection by filtering a user's context stream. Date: Friday, 22 May 2015 Time: 3:00pm - 5:00pm Venue: Room 2126B lift 19 Committee Members: Prof. Lionel Ni (Supervisor) Prof. Gary Chan (Chairperson) Dr. Qiong Luo Dr. Ke Yi **** ALL are Welcome ****