首页> 外文学位 >Selective color processing via automatic color segmentation.
【24h】

Selective color processing via automatic color segmentation.

机译:通过自动颜色分割进行选择性颜色处理。

获取原文
获取原文并翻译 | 示例

摘要

Selective color processing is a color image processing scheme which is performed only on a particular color component in a color image. Extraction or isolation of the color component can be achieved via color image segmentation. In this dissertation, an automatic color image segmentation algorithm based on the modifications of the multi-scale clustering (MSC) algorithm is introduced for the purpose of performing selective color processing. The developed color image segmentation algorithm isolates homogenous color regions in a color image in an automatic manner without requiring the number of colors or color regions to be specified by the user. Although the original MSC algorithm can be used to generate the prominent prototypes in the color domain, it has limitations when it comes to using it for color segmentation. This dissertation presents modifications to the original MSC algorithm by using the Riemersma's color difference measure, variable step sizes, and a color space sectoring procedure. The modified algorithm is referred to as MMSC. The computational complexity is also reduced by introducing a restricted potential function computation approach. In addition, a multi-layered chrominance segmentation step in the color domain and a fine color segments merging step in the spatial domain are introduced to make use of the spatial information. The developed color segmentation algorithm has been tested using many real and synthetic images. Five color difference measures and a newly introduced color edge likelihood measure have been deployed to evaluate the goodness of color representation and segmentation. The color difference measures indicate that the MMSC color segmentation algorithm produces on average a lower color distortion as compared to the widely used c-means type of clustering algorithms. Furthermore, the introduced color edge likelihood measure indicates a closer match to color edges as compared to the c-means type of clustering algorithms. The evaluation performed on synthetic images demonstrates that the developed MMSC color segmentation algorithm is more tolerant to noise. Several applications are presented to show some of the uses of the introduced algorithm.
机译:选择性颜色处理是仅对彩色图像中的特定颜色成分执行的彩色图像处理方案。颜色成分的提取或分离可以通过彩色图像分割来实现。本文针对多尺度聚类(MSC)算法的改进,提出了一种自动彩色图像分割算法,以进行选择性的彩色处理。开发的彩色图像分割算法可以自动隔离彩色图像中的同色区域,而无需用户指定颜色的数量或颜色区域。尽管可以使用原始的MSC算法在颜色域中生成突出的原型,但是在将其用于颜色分割时仍然存在局限性。本文利用Riemersma的色差测度,可变步长和颜色空间划分程序对原始MSC算法进行了修改。修改后的算法称为MMSC。通过引入受限的势函数计算方法,还降低了计算复杂度。另外,引入了色域中的多层色度分割步骤和空间域中的精细色段合并步骤,以利用空间信息。已开发的色彩分割算法已使用许多真实和合成图像进行了测试。已经部署了五个色差度量和一个新引入的颜色边缘似然度量,以评估颜色表示和分割的良好性。色差度量表明,与广泛使用的c均值聚类算法相比,MMSC颜色分割算法平均产生较低的颜色失真。此外,与c均值类型的聚类算法相比,引入的颜色边缘似然性度量表明与颜色边缘的匹配度更高。对合成图像进行的评估表明,开发的MMSC颜色分割算法对噪声的容忍度更高。提出了一些应用程序,以展示所引入算法的某些用途。

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