基于Curvelet变换的植物叶片种类鉴定

S. Prasad, Piyush Kumar, R. Tripathi
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引用次数: 52

摘要

本文提出了一种基于植物叶片等自然图像特征提取的植物物种自动识别方法,为植物学专业学生进行植物物种识别研究提供参考。采用一种新的多分辨率多向Curvelet变换对细分的叶片图像进行提取,在数学上不受图像中物体方向的影响,提高了叶片信息提取的准确率。这些系数将作为训练后的SVM分类器的输入,用于对结果进行分类。与该领域现有的植物物种识别方法和工具相比,该系统在624片叶片数据上的准确率达到95.6%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Plant leaf species identification using Curvelet transform
In this paper, a novel approach for feature extraction from natural image such as plant leaf is proposed for automated living plant species recognition useful for botanical students in their research for plant species identification. A new multi-resolution and multidirectional Curvelet transform is applied on subdivided leaf images to extract leaf information, mathematically so that the orientation of the object in the image does not matter and which also increase the accuracy rate. These coefficients will be the input to a trained SVM classifier to classify the result. Compared to other exiting methods and tools in this field of plant species recognition the proposed system gives a higher accuracy rate of around 95.6% with 624 leaf dataset.
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