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A novel approach for unsupervised image segmentation fusion of plant leaves based on G-mutual information

机译:基于G-互信息的植物叶片无监督图像分割融合的新方法

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摘要

Plant leaf segmentation has a very important role in most plant identification methods. Tree leaves segmentation in images with complex background is very difficult when there is no prior information about the leaves and backgrounds. In practice, the parameters of unsupervised image segmentation algorithms must be set for each image to get the best results. In this paper, to overcome this problem, fusion of the results of five leaf segmentation algorithms (fuzzy c-means, SOM and k-means in various color spaces or different parameters) is applied. To fuse the results of these segmentations, new equations for mutual information (g-mutual information equations) based on the g-calculus are introduced to find the best consensus segmentation. The results of the mentioned primary clustering algorithms are considered as a new feature vector for each pixel. To reduce the time complexity, a fast method is employed using truth table containing different feature vectors. To evaluate this new approach, a leaf image database with natural scenes, taken from Pl@ntLeaves database, is generated to have different positions and orientations. In addition, a widely used database is used to compare the proposed method with other methods. The experimental results presented in this paper show that the use of g-calculus in fusion of image segmentations improves the evaluation parameters.
机译:植物叶分割在大多数植物识别方法中具有非常重要的作用。树离开图像中的分割与复杂的背景是非常困难的,当没有关于叶子和背景的先前信息。在实践中,必须为每个图像设置无监督图像分割算法的参数以获得最佳结果。在本文中,为了克服这个问题,融合了五个叶片分割算法的结果(模糊C型算法,SOM和在各种颜色空间或不同参数中)。为了融合这些分段的结果,引入了基于G-COMBULUS的相互信息(G-互信息方程)的新方程来查找最佳共识分割。所提到的主群集算法的结果被认为是每个像素的新特征向量。为了减少时间复杂性,使用包含不同特征向量的真相表来使用快速方法。为了评估这种新方法,生成从PL @ NTLeaves数据库中获取的自然场景的叶图像数据库,以具有不同的位置和方向。此外,使用广泛使用的数据库用于将所提出的方法与其他方法进行比较。本文提出的实验结果表明,在图像分割融合中使用G-沟程改善了评价参数。

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