Comparison of techniques for leaf classification

2016 
A number of automated techniques for classification of plants based on their leaves have been developed over the past few years. While each of those techniques have been individually implemented and evaluated, but there have been few studies which have made a direct comparison between the various techniques. In this paper we compared the three well-known techniques. We compared their ability to differentiate among plant species. Techniques which areevaluated are, Histogram of Oriented Gradient (HOG),Colour Scale Invariant Feature Transform (C-SIFT) and Maximally Stable Extremal Region (MSER).These techniques are evaluated against two kinds of leafdatasets, one is our personal built dataset and the other is famous Flavia dataset. The experimental results shows that HOG has an accuracy of 98% on our dataset and 97% for Flavia dataset. Moreoverfor C-Sift the accuracy for both datasets is 98% and for MSER the accuracy is 96% and 90% for our and Flavia dataset respectively.
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