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ICVGIP
2008

Automated Flower Classification over a Large Number of Classes

14 years 26 days ago
Automated Flower Classification over a Large Number of Classes
We investigate to what extent combinations of features can improve classification performance on a large dataset of similar classes. To this end we introduce a 103 class flower dataset. We compute four different features for the flowers, each describing different aspects, namely the local shape/texture, the shape of the boundary, the overall spatial distribution of petals, and the colour. We combine the features using a multiple kernel framework with a SVM classifier. The weights for each class are learnt using the method of Varma and Ray [16], which has achieved state of the art performance on other large dataset, such as Caltech 101/256. Our dataset has a similar challenge in the number of classes, but with the added difficulty of large between class similarity and small within class similarity. Results show that learning the optimum kernel combination of multiple features vastly improves the performance, from 55.1% for the best single feature to 72.8% for the combination of all fea...
Maria-Elena Nilsback, Andrew Zisserman
Added 29 Oct 2010
Updated 29 Oct 2010
Type Conference
Year 2008
Where ICVGIP
Authors Maria-Elena Nilsback, Andrew Zisserman
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