快速图像量化与有效的颜色聚类

Yingying Liu
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引用次数: 0

摘要

彩色图像量化作为图形处理和图像处理中的一项重要任务,得到了广泛的应用。彩色图像量化的关键是生成有效的调色板。目前提出的彩色图像量化方法很多,基本上都是基于聚类的算法。例如,K-means聚类算法非常流行。然而,由于K-means算法多次迭代导致计算量大,且极易初始化,因此在颜色量化领域并没有得到足够的重视。提出了一种有效的颜色聚类方法来实现快速的颜色量化。该方法主要解决了传统K-means聚类算法的缺点,即减少数据样本并利用三角不等式加速最近邻搜索。该方法主要包括两个阶段。在第一阶段,生成一个初始调色板。在第二阶段,通过改进的K-means方法生成量化图像。主要的修改包括数据采样和平均排序,避免遍历所有集群中心,以及加快搜索调色板的时间。实验结果表明,该方法在效率和有效性方面都与现有的颜色量化算法具有相当的竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast image quantization with efficient color clustering
Color image quantization has been widely used as an important task in graphics manipulation and image processing. The key to color image quantization is to generate an efficient color palette. At present, there are many color image quantization methods that have been presented, which are fundamentally clustering-based algorithms. As an illustration, the K-means clustering algorithm is quite popular. However, the K-means algorithm has not been given sufficient focus in the field of color quantization due to its high computational effort caused by multiple iterations and its very susceptibility to initialization. This paper presented an efficient color clustering method to implement fast color quantization. This method mainly addresses the drawbacks of the conventional K-means clustering algorithm, which involves reducing the data samples and making use of triangular inequalities to accelerate the nearest neighbor search. The method mainly contains two stages. During the first phase, an initial palette is generated. In the second phase, quantized images are generated by a modified K-means method. Major modifications include data sampling and mean sorting, avoiding traversal of all cluster centers, and speeding up the time to search the palette. The experimental results illustrate that this presented method is quite competitive with previously presented color quantization algorithms both in the matter of efficiency and effectiveness.
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