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Reference TypeConference Proceedings
Sitesibgrapi.sid.inpe.br
Identifier8JMKD3MGPBW34M/3ED4F9S
Repositorysid.inpe.br/sibgrapi/2013/07.02.03.58
Last Update2013:07.02.03.58.55 wangq10@rpi.edu
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Metadata Last Update2020:02.19.03.09.22 administrator
Citation KeyWangBoye:2013:FeLeMu
TitleFeature Learning by Multidimensional Scaling and its Applications in Object Recognition
FormatOn-line.
Year2013
DateAug. 5-8, 2013
Access Date2020, Dec. 04
Number of Files1
Size672 KiB
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Author1 Wang, Quan
2 Boyer, Kim L.
Affiliation1 Rensselaer Polytechnic Institute
2 Rensselaer Polytechnic Institute
EditorBoyer, Kim
Hirata, Nina
Nedel, Luciana
Silva, Claudio
e-Mail Addresswangq10@rpi.edu
Conference NameConference on Graphics, Patterns and Images, 26 (SIBGRAPI)
Conference LocationArequipa, Peru
Book TitleProceedings
PublisherIEEE Computer Society
Publisher CityLos Alamitos
History2013-07-02 03:58:55 :: wangq10@rpi.edu -> administrator ::
2020-02-19 03:09:22 :: administrator -> :: 2013
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Is the master or a copy?is the master
Document Stagecompleted
Transferable1
Content TypeExternal Contribution
Tertiary TypeFull Paper
KeywordsFeature learning, image distance measurement, multidimensional scaling, spatial pyramid matching.
AbstractWe present the MDS feature learning framework, in which multidimensional scaling (MDS) is applied on high-level pairwise image distances to learn fixed-length vector representations of images. The aspects of the images that are captured by the learned features, which we call MDS features, completely depend on what kind of image distance measurement is employed. With properly selected semantics-sensitive image distances, the MDS features provide rich semantic information about the images that is not captured by other feature extraction techniques. In our work, we introduce the iterated Levenberg-Marquardt algorithm for solving MDS, and study the MDS feature learning with IMage Euclidean Distance (IMED) and Spatial Pyramid Matching (SPM) distance. We present experiments on both synthetic data and real images the publicly accessible UIUC car image dataset. The MDS features based on SPM distance achieve exceptional performance for the car recognition task.
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