Art painting Data Collection

dc.contributor.author
Martinez Saez, Jodi
dc.date
2011-07-01T11:37:28Z
dc.date
2011-07-01T11:37:28Z
dc.date
2011-06
dc.date.accessioned
2011-07-26T12:35:36Z
dc.date.available
2011-07-26T12:35:36Z
dc.date.issued
2011-07-26T12:35:36Z
dc.identifier.uri
http://hdl.handle.net/10609/8120
dc.description.abstract
The classification of Art painting images is a computer vision applications that isgrowing considerably. The goal of this technology, is to classify an art paintingimage automatically, in terms of artistic style, technique used, or its author. For thispurpose, the image is analyzed extracting some visual features. Many articlesrelated with these problems have been issued, but in general the proposed solutionsare focused in a very specific field. In particular, algorithms are tested using imagesat different resolutions, acquired under different illumination conditions. Thatmakes complicate the performance comparison of the different methods. In thiscontext, it will be very interesting to construct a public art image database, in orderto compare all the existing algorithms under the same conditions. This paperpresents a large art image database, with their corresponding labels according to thefollowing characteristics: title, author, style and technique. Furthermore, a tool thatmanages this database have been developed, and it can be used to extract differentvisual features for any selected image. This data can be exported to a file in CSVformat, allowing researchers to analyze the data with other tools. During the datacollection, the tool stores the elapsed time in the calculation. Thus, this tool alsoallows to compare the efficiency, in computation time, of different mathematicalprocedures for extracting image data.
dc.language.iso
cat
dc.publisher
Universitat Oberta de Catalunya
dc.rights
<a href="http://creativecommons.org/licenses/by-nc-sa/3.0/es/">http://creativecommons.org/licenses/by-nc-sa/3.0/es/</a>
dc.subject
art painting
dc.subject
data collection
dc.title
Art painting Data Collection
dc.type
Master thesis


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