DWT-based scene-adaptive color quantization

N. Kim, N. Kehtarnavaz
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引用次数: 20

Abstract

Color quantization is the process of reducing the number of colors in an image. That is, color quantization maps a large number of colors into a much smaller number of representative colors while keeping color distortion to an acceptable level. The reduction in the number of colors lowers computational complexity associated with color processing, and achieves higher color image compression for storage and transmission purposes. The existing color quantization methods require that the number of representative or prominent colors be specified by the user. This paper presents a scene-adaptive color quantization method which eases this constraint by determining the number of representative colors automatically. This method utilizes the discrete wavelet transform to achieve a computationally efficient implementation of the multi-scale clustering algorithm in a 3D color space. The performance is evaluated in terms of compression ratio or number of representative colors, color distortion, and computational complexity. It is shown that the developed method outperforms the popular color quantization methods in terms of color distortion.

基于小波变换的场景自适应颜色量化
颜色量化是减少图像中颜色数量的过程。也就是说,颜色量化将大量颜色映射为数量少得多的代表性颜色,同时将颜色失真保持在可接受的水平。颜色数量的减少降低了与颜色处理相关的计算复杂性,并为存储和传输目的实现更高的彩色图像压缩。现有的颜色量化方法要求用户指定具有代表性或突出的颜色的数量。本文提出了一种场景自适应颜色量化方法,通过自动确定代表颜色的数量来缓解这种约束。该方法利用离散小波变换实现了三维色彩空间中多尺度聚类算法的高效计算。性能是根据压缩比或代表性颜色的数量、颜色失真和计算复杂性来评估的。结果表明,该方法在颜色失真方面优于常用的颜色量化方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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