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Multimedia Tools and Applications

, Volume 77, Issue 22, pp 30011–30033 | Cite as

Destination selection based on consensus-selected landmarks

  • Pei-Ying ChiangEmail author
  • Shih-Hsuan Hung
  • Yu-Chi Lai
  • Chih-Yuan Yao
Article
  • 108 Downloads

Abstract

This study aims at enhancing the destination look-up experience based on the fact that humans can easily recognize and remember images and icons of a destination instead of texts and numbers. Thus, this paper propose an algorithm to display buildings in hierarchical publicity and optimize the location distribution and orientation of each buildings. In the usual, the general navigation GPS include a lot of redundant information, and the necessary information always being drowned. Aimed to this point, we build the hierarchical structure according to their consensus-based publicity and spacial relationship to each other. The publicity is approximated by considering transportation importance and consensus visibility which reflects public consideration on metro transportation, opinions on popularity and famousness respectively. In addition to this, consensus-based optimal orientation of icon is optimized for easy recognition according to public preference estimated by clustering the view of public web photos. For the system evaluation, we perform four user studies to verify the effect of recognition and destination searching, and we all get positive response from these user studies.

Keywords

Consensus-based publicity Consensus-based optimal orientation Hierarchical navigation Destination searching 

Supplementary material

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© Springer Science+Business Media, LLC, part of Springer Nature 2018

Authors and Affiliations

  1. 1.Department of Computer Science and Information EngineeringNational Taipei University of TechnologyTaipeiTaiwan
  2. 2.Department of Computer Science and Information EngineeringNational Taiwan University of Science and TechnologyTaipeiTaiwan

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