...
首页> 外文期刊>International Scholarly Research Notices >Self-Organizing Map-Based Color Image Segmentation withk-Means Clustering and Saliency Map
【24h】

Self-Organizing Map-Based Color Image Segmentation withk-Means Clustering and Saliency Map

机译:基于自组织图的彩色图像分割与k均值聚类和显着性图

获取原文
           

摘要

Natural image segmentation is an important topic in digital image processing, and it could be solved by clustering methods. We present in this paper an SOM-basedk-means method (SOM-K) and a further saliency map-enhanced SOM-K method (SOM-KS). In SOM-K, pixel features of intensity andL∗u∗v∗color space are trained with SOM and followed by ak-means method to cluster the prototype vectors, which are filtered with hits map. A variant of the proposed method, SOM-KS, adds a modified saliency map to improve the segmentation performance. Both SOM-K and SOM-KS segment the image with the guidance of an entropy evaluation index. Compared to SOM-K, SOM-KS makes a more precise segmentation in most cases by segmenting an image into a smaller number of regions. At the same time, the salient object of an image stands out, while other minor parts are restrained. The computational load of the proposed methods of SOM-K and SOM-KS are compared to J-image-based segmentation (JSEG) andk-means. Segmentation evaluations of SOM-K and SOM-KS with the entropy index are compared with JSEG andk-means. It is observed that SOM-K and SOM-KS, being an unsupervised method, can achieve better segmentation results with less computational load and no human intervention.
机译:自然图像分割是数字图像处理中的重要课题,可以通过聚类方法解决。我们在本文中介绍了一种基于SOM的k均值方法(SOM-K)和另一种显着性增强的SOM-K方法(SOM-KS)。在SOM-K中,使用SOM训练强度和L * u * v *颜色空间的像素特征,然后使用ak-means方法对原型向量进行聚类,然后使用匹配图进行过滤。所提出方法的一种变体SOM-KS添加了修改后的显着图以提高分割性能。 SOM-K和SOM-KS都在熵评估指标的指导下对图像进行分割。与SOM-K相比,在大多数情况下,SOM-KS通过将图像分割为较少数量的区域来进行更精确的分割。同时,图像的突出对象突出,而其他次要部分受到限制。将提出的SOM-K和SOM-KS方法的计算负荷与基于J图像的分割(JSEG)和k-means进行了比较。将具有熵指数的SOM-K和SOM-KS的分割评估与JSEG和k-means进行比较。可以看出,SOM-K和SOM-KS是一种无监督的方法,可以实现更好的分割结果,并且计算量更少,并且无需人工干预。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号