Fox Data Set
Description
This problem consist of identifying the intended target object(s) in images. The main
difficulty is due to the fact that an image may contain multiple, possibly heterogeneous objects.
Thus, the global description of a whole image is too coarse to achieve good classification and
retrieval accuracy. Even if relevant images are provided, identifying which object(s) within the
example images are relevant remains a hard problem in the supervised learning setting. However,
this problem fits in MIL settings well: each image can be treated as a bag of segments which are
modeled as instances, and the concept point representing the target object can be learned through
MIL algorithms. This data set considers data sets representing foxes. Each data set consists of 100 images which
contains foxes and the other 100 images which contains another different animals. The final
goal consist of distinguising images containing the foxes from those that do not contain
it.
Dataset with Reduced dimensionality
The original data set is partitioned using 10-fold cross-validation procedure five times. Thus, five different partitions of 10-fold cross validation are available
10-fold cross validation |
Files |
Procedure 1 | fox-10-proc1.arff |
Procedure 2 | fox-10-proc2.arff |
Procedure 3 | fox-10-proc3.arff |
Procedure 4 | fox-10-proc4.arff |
Procedure 5 | fox-10-proc5.arff |