Title
Ranking canonical views for tourist attractions
Abstract
Online photo collections have become truly gigantic. Photo sharing sites such as Flickr ( http://www.flickr.com/ ) host billions of photographs, a large portion of which are contributed by tourists. In this paper, we leverage online photo collections to automatically rank canonical views for tourist attractions. Ideal canonical views for a tourist attraction should both be representative of the site and exhibit a diverse set of views (Kennedy and Naaman, International Conference on World Wide Web 297---306, 2008). In order to meet both goals, we rank canonical views in two stages. During the first stage, we use visual features to encode the content of photographs and infer the popularity of each photograph. During the second stage, we rank photographs using a suppression scheme to keep popular views top-ranked while demoting duplicate views. After a ranking is generated, canonical views at various granularities can be retrieved in real-time, which advances over previous work and is a promising feature for real applications. In order to scale canonical view ranking to gigantic online photo collections, we propose to leverage geo-tags (latitudes/longitudes of the location of the scene in the photographs) to speed up the basic algorithm. We preprocess the photo collection to extract subsets of photographs that are geographically clustered (or geo-clusters), and constrain the expensive visual processing within each geo-cluster. We test the algorithm on two large Flickr data sets of Rome and the Yosemite national park, and show promising results on canonical view ranking. For quantitative analysis, we adopt two medium data sets and conduct a subjective comparison with previous work. It shows that while both algorithms are able to produce canonical views of high quality, our algorithm has the advantage of responding in real-time to canonical view retrieval at various granularities.
Year
DOI
Venue
2010
10.1007/s11042-009-0345-1
Multimedia Tools Appl.
Keywords
Field
DocType
Canonical view ranking,Photo collections,Page Rank,Adaptive non-maximal suppression,SIFT,The wisdom of crowds
ENCODE,Scale-invariant feature transform,Page rank,Computer vision,Data set,Visual processing,Ranking,Computer science,Popularity,Tourism,Artificial intelligence
Journal
Volume
Issue
ISSN
46
2-3
1380-7501
Citations 
PageRank 
References 
2
0.37
21
Authors
3
Name
Order
Citations
PageRank
Lin Yang11291116.88
John Johnstone2121.91
Chengcui Zhang378984.56