2013 ImageCLEF WEBUPV Collection
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This document describes the WEBUPV dataset compiled for the ImageCLEF
2013 Scalable Concept Image Annotation task. The data mentioned here
indicates what is ready for download. However, upon request or
depending on feedback from the participants, additional data may be
released.
The following is the directory structure of the collection, and bellow
there is a brief description of what each compressed file
contains.
Any publication in which this data has been used is required to cite the
following paper:
@inproceedings{Villegas13_CLEF,
author = {Mauricio Villegas and Roberto Paredes and Bart Thomee},
title = {{O}verview of the {ImageCLEF} 2013 {S}calable {C}oncept {I}mage {A}nnotation {S}ubtask},
booktitle = {CLEF 2013 Evaluation Labs and Workshop, Online Working Notes},
year = {2013},
month = {September 23-26},
address = {Valencia, Spain},
isbn = {978-88-904810-5-5},
issn = {2038-4963},
}
If the 'hsvcolorhist' and/or the 'lbpcenter' visual features are used, then it
is also required to cite:
@inproceedings{SanchezOro13_CLEF,
author = {Jes\'us S\'anchez-Oro and Soto Montalvo and Antonio S. Montemayor and Juan J. Pant
rigo and Abraham Duarte and V\'ictor Fresno and Raquel Mart\'inez},
title = {{URJC\&UNED} at {ImageCLEF} 2013 {P}hoto {A}nnotation {T}ask},
booktitle = {CLEF 2013 Evaluation Labs and Workshop, Online Working Notes},
year = {2013},
month = {September 23-26},
address = {Valencia, Spain},
isbn = {978-88-904810-5-5},
issn = {2038-4963},
}
Directory structure
-------------------
.
|
|--- README.txt
|--- md5sums.txt
|--- webupv13_train_lists.zip
|--- webupv13_devel_lists.zip
|--- webupv13_test_lists.zip
|--- webupv13_baseline.zip
|
|--- feats_textual/
| |
| |--- webupv13_train_textual_pages.zip
| |--- webupv13_train_textual.scofeat.gz
| |--- webupv13_train_textual.keywords.gz
|
|--- feats_visual/
|
|--- webupv13_{train|devel|test}_visual_images.zip
|--- webupv13_{train|devel|test}_visual_gist.feat.gz
|--- webupv13_{train|devel|test}_visual_sift_1000.feat.gz
|--- webupv13_{train|devel|test}_visual_csift_1000.feat.gz
|--- webupv13_{train|devel|test}_visual_rgbsift_1000.feat.gz
|--- webupv13_{train|devel|test}_visual_opponentsift_1000.feat.gz
|--- webupv13_{train|devel|test}_visual_colorhist.feat.gz
|--- webupv13_{train|devel|test}_visual_getlf.feat.gz
|--- webupv13_{train|devel|test}_visual_hsvcolorhist.feat.gz
|--- webupv13_{train|devel|test}_visual_lbpcenter.feat.gz
Contents of files
-----------------
* webupv13_train_lists.zip
-> train_iids.txt : IDs of the images (IIDs) in the training set
(250000).
-> train_rids.txt : IDs of the webpages (RIDs) in the training set
(262526).
-> train_*urls.txt : The original URLs from where the images (iurls)
and the webpages (rurls) were downloaded. Each line in the file
corresponds to an image, starting with the IID and is followed
by one or more URLs.
-> train_rimgsrc.txt : The URLs of the images as referenced in each
of the webpages. Each line of the file is of the form: IID RID
URL1 [URL2 ...]. This information is necessary to locate the
images within the webpages and it can also be useful as a
textual feature.
* webupv13_devel_lists.zip
-> devel_iids.txt : IDs of the images in the development set (1000).
-> devel_*urls.txt : The original URLs from where the images (iurls)
and the webpages (rurls) were downloaded. Each line in the file
corresponds to an image, starting with the IID and is followed
by one or more URLs.
Note: These are included only to acknowledge the source of the
data, not be used as input to the annotation systems.
-> devel_concepts.txt : List concepts for the development set.
-> devel_gnd.txt : Ground truth concepts for the development set
images.
The concepts are defined by one or more WordNet synsets, which is
intended to make it possible to easily obtain more information about
the concepts, e.g. synonyms. In the concept list, the first column
(which is the name of the concept) indicates the word to search in
WordNet, the second column the synset type (either noun or
adjective), the third column is the sense number and the fourth
column is the WordNet offset (although this cannot be trusted since
it changes between WordNet versions). For most of the concepts there
is a fifth column which is a Wikipedia article related to the
concept.
* webupv13_test_lists.zip
-> test_iids.txt : IDs of the images in the test set (2000).
-> test_*urls.txt : The original URLs from where the images (iurls)
and the webpages (rurls) were downloaded. Each line in the file
corresponds to an image, starting with the IID and is followed
by one or more URLs.
Note: These are included only to acknowledge the source of the
data, not be used as input to the annotation systems.
-> test_concepts.txt : List concepts for the test set.
-> test_gnd.txt : Ground truth concepts for the test set images.
The definition of the concepts is the same as for
devel_concepts.txt. Note that the concepts are not the same as for
the development set.
* webupv13_baseline.zip
An archive that includes code for computing the evaluation measures
for two baseline techniques. See the included README.txt for
details.
* feats_textual/webupv13_train_textual_pages.zip
Contains all of the webpages which referenced the images in the
training set after being converted to valid xml. In total there are
262588 files, since each image can appear in more than one page, and
there can be several versions of same page which differ by the
method of conversion to xml. To avoid having too many files in a
single directory (which is an issue for some types of partitions),
the files are found in subdirectories named using the first two
characters of the RID, thus the paths of the files after extraction
are of the form:
./WEBUPV/pages/{RID:0:2}/{RID}.{CONVM}.xml.gz
To be able to locate the training images withing the webpages, the
URLs of the images as referenced are provided in the file
train_rimgsrc.txt.
* feats_textual/webupv13_train_textual.scofeat.gz
The processed text extracted from the webpages near where the images
appeared. Each line corresponds to one image, having the same order
as the train_iids.txt list. The lines start with the image ID,
followed by the number of extracted unique words and the
corresponding word-score pairs. The scores were derived taking into
account 1) the term frequency (TF), 2) the document object model
(DOM) attributes, and 3) the word distance to the image. The scores
are all integers and for each image the sum of scores is always
<=100000 (i.e. it is normalized).
* feats_textual/webupv13_train_textual.keywords.gz
The words used to find the images when querying image search
engines. Each line corresponds to an image (in the same order as in
train_iids.txt). The lines are composed of triplets:
[keyword] [rank] [search_engine]
where [keyword] is the word used to find the image, [rank] is the
position given to the image in the query, and [search_engine] is a
single character indicating in which search engine it was found
('g':google, 'b':bing, 'y':yahoo).
* feats_visual/webupv13_*_images.zip
Contains thumbnails (maximum 640 pixels of either width or height)
of the images in jpeg format. To avoid having too many files in a
single directory (which is an issue for some types of partitions),
the files are found in subdirectories named using the first two
characters of the IID, thus the paths of the files after extraction
are of the form:
./WEBUPV/images/{IID:0:2}/{IID}.jpg
* feats_visual/webupv13_*.feat.gz
The visual features in a simple ASCII text sparse format. The first
line of the file indicates the number of vectors (N) and the
dimensionality (DIMS). Then each line corresponds to one vector,
starting with the number of non-zero elements and followed by pairs
of dimension-value, being the first dimension 0. In summary the file
format is:
N DIMS
nz1 Dim(1,1) Val(1,1) ... Dim(1,nz1) Val(1,nz1)
nz2 Dim(2,1) Val(2,1) ... Dim(2,nz2) Val(2,nz2)
...
nzN Dim(N,1) Val(N,1) ... Dim(N,nzN) Val(N,nzN)
The order of the features is the same as in the lists
devel_iids.txt, test_iids.txt and train_iids.txt.
The procedure to extract the SIFT based features in this
subdirectory was conducted as follows. Using the ImageMagick
software, the images were first rescaled to having a maximum of 240
pixels, of both width and height, while preserving the original
aspect ratio, employing the command:
convert {IMGIN}.jpg -resize '240>x240>' {IMGOUT}.jpg
Then the SIFT features where extracted using the ColorDescriptor
software from Koen van de Sande
(http://koen.me/research/colordescriptors). As configuration we
used, 'densesampling' detector with default parameters, and a hard
assignment codebook using a spatial pyramid as
'pyramid-1x1-2x2'. The number in the file name indicates the size of
the codebook. All of the vectors of the spatial pyramid are given in
the same line, thus keeping only the first 1/5th of the dimensions
would be like not using the spatial pyramid. The codebook was
generated using 1.25 million randomly selected features and the
k-means algorithm. The GIST features were extracted using the
LabelMe Toolbox. The images where first resized to 256x256 ignoring
original aspect ratio, using 5 scales, 6 orientations and 4
blocks. The other features colorhist and getlf, are both color
histogram based extracted using our own implementation.
创建时间:
2020-01-21



