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Multimedia Systems

, Volume 25, Issue 5, pp 513–523 | Cite as

Informative image selection for crowdsourcing-based mobile location recognition

  • Hao WangEmail author
  • Dong Zhao
  • Huadong Ma
Special Issue Paper
  • 120 Downloads

Abstract

With the prevalence of smartphones, the demand of recognizing the location through their camera and sensors is paid abundant attentions. For constructing a location recognition image database, the crowdsourcing technology is introduced to collect images associated with other sensory data. However, as abundant crowdsourced images evolve, it is essential to select high-quality images to decrease the burden of storage when designing an offline location recognition system directly on mobile devices. To address this problem, we propose an image selection framework, i.e., Informative image Selection Framework (ISF), considering both the diversity in spatial distribution and representativeness of images with high quality. First, for the images corresponding to the same object, we propose the Self-adaptive Space Clustering algorithm to group them into several clusters for maintaining high diversity of the image database. Second, for every cluster, we propose the Crucial Part Feature Detection algorithm to detect representative images. Extensive experiments demonstrate that ISF is effective and efficient for image selection, outperforming other similar image selection schemes around 5%.

Keywords

Image selection View direction Crowdsourcing Mobile location recognition 

Notes

Acknowledgements

This work is supported by the National Natural Science Foundation of China under Grant No. 61332005 and No. 61502051, the Funds for Creative Research Groups of China under Grant No. 61421061, the Cosponsored Project of Beijing Committee of Education, and the Beijing Training Project for the Leading Talents in S&T (ljrc201502).

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Copyright information

© Springer-Verlag GmbH Germany 2017

Authors and Affiliations

  1. 1.Beijing Key Laboratory of Intelligent Telecommunications Software and Multimedia, School of Computer ScienceBeijing University of Posts and TelecommunicationsBeijingChina

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