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A Fast Leaf Recognition Algorithm based on SVM Classifier and High Dimensional Feature Vector

机译:一种基于SVM分类器和高维特征向量的快速叶识别算法

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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.
机译:植物对人类是基础的,因此对目录并保存所有植物物种非常重要。识别未知的植物物种不是一个简单的任务。基于叶片识别的自动图像处理技术可以有助于找到适用于工厂表示和分类的最佳功能。在文献中存在的许多方法仅使用一组小而复杂的特征,通常从二进制图像或叶子的边界中提取。在这项工作中,我们提出了一种截图识别方法,它使用包含形状,颜色和纹理功能的新功能集。总共提取了138个功能并用于训练SVM模型。该方法已经在Flavia DataSet上进行了测试(Wu等,2007),在准确性方面表现出优异的性能,通常达到100%,并且在速度方面,速度小于一秒钟的过程和从图像​​中提取特征。

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