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Modified locally linear discriminant embedding for plant leaf recognition

机译:改进的局部线性判别嵌入用于植物叶片识别

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摘要

Based on locally linear embedding (LLE) and modified maximizing margin criterion (MMMC), a modified locally linear discriminant embedding (MLLDE) algorithm is proposed for plant leaf recognition in this paper. By MLLDE, the plant leaf images are mapped into a leaf subspace for analysis, which can detect the essential leaf manifold structure. Furthermore, the unwanted variations resulting from changes in period, location, and illumination can be eliminated or reduced. Different from principal component analysis (PCA) and linear discriminant analysis (LDA), which can only deal with flat Euclidean structures of plant leaf space, MLLDE not only inherits the advantages of locally linear embedding (LLE), but makes full use of class information to improve discriminant power by introducing translation and rescaling models. The experimental results on real plant leaf database show that the MLLDE is effective for plant leaf recognition.
机译:基于局部线性嵌入(LLE)和改进的最大化边际判据(MMMC),提出了一种改进的局部线性判别嵌入(MLLDE)算法,用于植物叶片识别。通过MLLDE,将植物叶片图像映射到叶片子空间中进行分析,从而可以检测出必要的叶片歧管结构。此外,可以消除或减少由周期,位置和照明的变化引起的不希望的变化。与主成分分析(PCA)和线性判别分析(LDA)只能处理植物叶空间的平坦欧几里得结构不同,MLLDE不仅继承了局部线性嵌入(LLE)的优点,而且还充分利用了类别信息通过引入翻译和缩放比例模型来提高判别能力。在真实植物叶片数据库上的实验结果表明,MLLDE对于植物叶片识别是有效的。

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