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Maximum Inter Class Variance Segmentation Algorithm Based on Decision Tree

机译:基于决策树的最大类间方差分割算法

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摘要

In image segmentation, there are always some false targets which remain in the segmented image. As the grayscale values of these false targets are quite similar to the grayscale values of the targets of interest, it is very difficult to split them out. And because these false targets exist in the original image, which are not caused by noise or traditional filtering methods, such as median filtering, they cannot be eliminated effectively. It is important to analyze the characteristics of false targets, so the false targets can be removed. In addition, it should be noted that the targets of interest cannot be affected when the false targets are removed. In order to overcome above problems, a maximum inter-class variance segmentation algorithm based on a decision tree is proposed. In this method, the decision tree classification algorithm and the maximum inter-class variance segmentation algorithm are combined. First, the maximum inter-class variance algorithm is used to segment the image, and then a decision tree is constructed according to the attributes of regions in the segmented image. Finally, according to the decision tree, the regions of the segmented image are divided into three categories, including large target regions, small target regions and false target regions, so that the false target regions are removed. The proposed algorithm can eliminate the false targets and improve the segmentation accuracy effectively. In order to demonstrate the effectiveness of the algorithm proposed in this article, the proposed method is compared with some frequently used false target removal approaches. Experimental results show that the proposed algorithm can achieve better results than other algorithms.
机译:在图像分割中,在分割的图像中始终会保留一些错误的目标。由于这些错误目标的灰度值与目标目标的灰度值非常相似,因此很难将它们分开。并且由于这些假目标存在于原始图像中,不是由噪声或传统的滤波方法(例如中值滤波)引起的,因此无法有效消除。分析虚假目标的特征很重要,因此可以删除虚假目标。另外,应该注意的是,当去除错误目标时,目标目标不会受到影响。为了克服上述问题,提出了一种基于决策树的最大类间方差分割算法。该方法将决策树分类算法和最大类间方差分割算法相结合。首先,使用最大类间方差算法对图像进行分割,然后根据分割后图像中区域的属性构造决策树。最后,根据决策树,将分割图像的区域分为大目标区域,小目标区域和假目标区域三类,从而去除假目标区域。提出的算法可以消除虚假目标,有效提高分割精度。为了证明本文提出的算法的有效性,将提出的方法与一些常用的错误目标去除方法进行了比较。实验结果表明,与其他算法相比,该算法能取得更好的效果。

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