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On Estimation of the Number of Image Principal Colors and Color Reduction through Self-Organized Neural Networks

机译:基于自组织神经网络的图像原色数量估计和减色

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摘要

A new technique suitable for reduction of the number of colors in a color image is presented in this article. It is based on the use of the image Principal Color Components (PCC), which consist of the image color components and additional image components extracted with the use of proper spatial features. The additional spatial features are used to enhance the quality of the final image. First, the principal colors of the image and the principal colors of each PCC are extracted. Three algorithms were developed and tested for this purpose. Using Kohonen self-organizing feature maps (SOFM) as classifiers, the principal color components of each PCC are obtained and a look-up table, containing the principal colors of the PCC, is constructed. The final colors are extracted from the look-up table entries through a SOFM by setting the number of output neurons equal to the number of the principal colors obtained for the original image. To speed up the entire algorithm and reduce memory requirements, a fractal scanning subsampling technique is employed. The method is independent of the color scheme; it is applicable to any type of color images and can be easily modified to accommodate any type of spatial features. Several experimental and comparative results exhibiting the performance of the proposed technique are presented.
机译:本文介绍了一种适用于减少彩色图像中颜色数量的新技术。它基于图像主要颜色成分(PCC)的使用,该成分由图像颜色成分和使用适当空间特征提取的其他图像成分组成。附加的空间特征用于增强最终图像的质量。首先,提取图像的原色和每个PCC的原色。为此,开发并测试了三种算法。使用Kohonen自组织特征图(SOFM)作为分类器,可以获得每个PCC的主要颜色分量,并构造一个包含PCC的主要颜色的查找表。通过将输出神经元的数量设置为等于为原始图像获得的原色的数量,可以通过SOFM从查找表条目中提取最终颜色。为了加快整个算法的速度并减少内存需求,采用了分形扫描子采样技术。该方法与配色方案无关。它适用于任何类型的彩色图像,并且可以轻松修改以适应任何类型的空间特征。展示了提出的技术的性能的几个实验和比较结果。

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