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Semi-supervised orthogonal discriminant projection for plant leaf classification

机译:半监督正交判别投影在植物叶片分类中的应用

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摘要

Plant classification based on the leaf images is an important and tough task. For leaf classification problem, in this paper, a new weight measure is presented, and then a dimensional reduction algorithm, named semi-supervised orthogonal discriminant projection (SSODP), is proposed. SSODP makes full use of both the labeled and unlabeled data to construct the weight by incorporating the reliability information, the local neighborhood structure and the class information of the data. The experimental results on the two public plant leaf databases demonstrate that SSODP is more effective in terms of plant leaf classification rate.
机译:基于叶片图像的植物分类是一项重要而艰巨的任务。针对叶片分类问题,提出一种新的权重度量,然后提出一种降维算法,即半监督正交判别投影(SSODP)。 SSODP通过结合数据的可靠性信息,局部邻域结构和类别信息,充分利用标记和未标记的数据来构造权重。在两个公共植物叶片数据库上的实验结果表明,SSODP在植物叶片分类率方面更有效。

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