DocumentCode :
3777188
Title :
A hierarchical class-grouping approach, and a study of classification strategies for leaf classification
Author :
Ravinder Prajapati;Arnav Bhavsar;Anil Sao
Author_Institution :
School of Computing and Elec. Engg., Indian Institute of Technology, Mandi, India
fYear :
2015
Firstpage :
1
Lastpage :
4
Abstract :
Fine-grained visual classification has been considered for image data in various domains of environmental importance such as birds, animals and plants. This work considers the classification problem of the latter, based on the leaf shape. Traditional works in such areas typically propose better features, or sophisticated classification frameworks. In this work, we ask a different question: Given simple and efficient features, and a well-known binary classifier such as support vector machine (SVM), among various strategies, what may be a good way to pose the multi-class classification problem as multiple binary classifications? In this respect, we compare three different strategies, all of which use the same set of features. From our results, we conclude that, one of these three approaches, based on hierarchical class-grouping, clearly outperforms the others, with high classification accuracy. This suggest that classification strategy is an important aspect for the given features and classifiers. To our knowledge, such a study in the fine-grained classification area (and particularly for the nascent area of leaf-classification), has not yet been explored.
Keywords :
"Shape","Support vector machines","Feature extraction","Visualization","Image color analysis","Veins","Libraries"
Publisher :
ieee
Conference_Titel :
Computer Vision, Pattern Recognition, Image Processing and Graphics (NCVPRIPG), 2015 Fifth National Conference on
Type :
conf
DOI :
10.1109/NCVPRIPG.2015.7490052
Filename :
7490052
Link To Document :
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