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Two-dimensional multifractal detrended fluctuation analysis for plant identification

机译:二维多重分形去趋势波动分析用于植物识别

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Background In this paper, a novel method is proposed to identify plant species by using the two- dimensional multifractal detrended fluctuation analysis (2D MF-DFA). Our method involves calculating a set of multifractal parameters that characterize the texture features of each plant leaf image. An index, I0, that characterizes the relation of the intra-species variances and inter-species variances is introduced. This index is used to select three multifractal parameters for the identification process. The procedure is applied to the Swedish leaf data set containing leaves from fifteen different tree species. Results The chosen three parameters form a three-dimensional space in which the samples from the same species can be clustered together and be separated from other species. Support vector machines and kernel methods are employed to assess the identification accuracy. The resulting averaged discriminant accuracy reaches 98.4% for every two species by the 10???fold cross validation, while the accuracy reaches 93.96% for all fifteen species. Conclusions Our method, based on the 2D MF-DFA, provides a feasible and efficient procedure to identify plant species.
机译:背景技术本文提出了一种通过二维多维分形趋势波动分析(2D MF-DFA)识别植物种类的新方法。我们的方法包括计算一组表征每个植物叶片图像纹理特征的多重分形参数。引入了一个指数I0,该指数表征了物种内部变异与物种间变异的关系。该索引用于选择三个多重分形参数以进行识别。该过程将应用于包含15种不同树种叶子的瑞典叶子数据集。结果所选的三个参数形成一个三维空间,来自同一物种的样本可以在该空间中聚集在一起,并与其他物种分离。支持向量机和核方法用于评估识别准确性。通过10 -6倍交叉验证,所得到的平均判别精度对于每两个物种达到98.4%,而对于所有十五个物种,精度都达到93.96%。结论我们的方法基于2D MF-DFA,提供了一种可行且有效的程序来鉴定植物种类。

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