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Implicit Mobile Crowdsourcing for Fingerprint Database Construction: Approaches and Comparisons
PhD Qualifying Examination Title: "Implicit Mobile Crowdsourcing for Fingerprint Database Construction: Approaches and Comparisons" by Mr. Weipeng ZHUO Abstract: Indoor localization is becoming more and more important in people's daily life. However, construction of fingerprint database for localization is still labor intensive and time consuming. Among various techniques, implicit mobile crowdsourcing has emerged as a practical and popular approach. It is cost effective, non-intrusive to users and easily scalable. In this survey, we study from the literature important works on implicit mobile crowdsourcing for fingerprint database construction, to provide a comprehensive overview of this field. In particular, we focus on two areas of research, pure sensor signal based approach and fusion of different signals. Pure sensor signal based techniques leverage single signal from mobile devices to conduct crowdsourcing behavior and label the crowdsourced data accordingly. Commonly used signals include inertial navigation sensors (INS), radio frequencies (RF), sound and light, etc. Fusion-based approach takes advantage of characteristics of each signal so as to make a better prediction for labels of implicit crowdsourced signals. Fusion of INS and RF plays an important role in implicit crowdsourcing, while others are also evolving quickly to tackle the problem. In this survey, we review extensively both classic and recent advances for the two categories of schemes. We also study and compare their strengths and weaknesses under practical deployment. Date: Friday, 30 August 2019 Time: 10:00am - 12:00noon Venue: Room 3494 Lifts 25/26 Committee Members: Prof. Gary Chan (Supervisor) Dr. Brian Mak (Chairperson) Prof. Andrew Horner Prof. Ke Yi **** ALL are Welcome ****