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COLOR IMAGE QUANTIZATION BY MINIMIZING THE MAXIMUM INTERCLUSTER DISTANCE

机译:通过最小化群集间距离来对彩色图像进行量化

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摘要

One of the numerical criteria for color image quantization is to minimize the maximum discrepancy between original pixel colors and the corresponding quantized colors. This is typically carried out by first grouping color points into tight clusters and then finding a representative for each cluster. In this article we show that getting the smallest clusters under a formal notion of minimizing the maximum intercluster distance does not guarantee an optimal solution for the quantization criterion. Nevertheless, our use of an efficient clustering algorithm by Teofilo F. Gonzalez, which is optimal with respect to the approximation bound of the clustering problem, has resulted in a fast and effective quantizer. This new quantizer is highly competitive and excels when quantization errors need to be well capped and when the performance of other quantizers may be hindered by such factors as low number of quantized colors or unfavorable pixel population distribution. Both computer-synthesized and photographic images are used in experimental comparison with several existing quantization methods. [References: 32]
机译:彩色图像量化的数字标准之一是最小化原始像素颜色和相应的量化颜色之间的最大差异。这通常是通过首先将色点分组为紧密的簇,然后为每个簇找到代表来实现的。在本文中,我们表明,在最小化最大簇间距离的形式概念下获得最小的簇并不能保证量化标准的最佳解决方案。尽管如此,我们使用Teofilo F. Gonzalez的高效聚类算法(对于聚类问题的近似边界而言是最佳的)已实现了快速有效的量化。这种新的量化器具有很高的竞争力,在量化误差需要得到很好的限制时,以及当量化颜色数量少或像素数量分布不佳等其他因素可能阻碍其他量化器的性能时,它都表现出色。与一些现有的量化方法进行实验比较时,都使用计算机合成图像和摄影图像。 [参考:32]

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