A Fast Leaf Recognition Algorithm Based On Svm Classifier And High Dimensional Feature Vector

PROCEEDINGS OF THE 2014 9TH INTERNATIONAL CONFERENCE ON COMPUTER VISION THEORY AND APPLICATIONS (VISAPP), VOL 1(2014)

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摘要
Plants are fundamental for human beings, so it's very important to catalog and preserve all the plants species. Identifying an unknown plant species is not a simple task. Automatic image processing techniques based on leaves recognition can help to find the best features useful for plant representation and classification. Many methods present in literature use only a small and complex set of features, often extracted from the binary images or the boundary of the leaf. In this work we propose a leaf recognition method which uses a new features set that incorporates shape, color and texture features. A total of 138 features are extracted and used for training a SVM model. The method has been tested on Flavia dataset (Wu et al., 2007), showing excellent performance both in terms of accuracy that often reaches 100%, and in terms of speed, less than a second to process and extract features from an image.
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关键词
Image Analysis, Feature Extraction, Leaf Recognition, Plant Classification, Support Vector Machine
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