基于归一化切割算法的彩色图像量化新方法

Jin Zhang, Yonghong Song, Yuanlin Zhang, Xiaobing Wang
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引用次数: 2

摘要

提出了一种基于归一化切聚类算法的彩色量化方法,以最小的信息损失和最大的压缩比生成量化图像,有利于彩色图像的存储和传输。该方法采用一种变形中值切割算法对RGB颜色空间中的颜色像素进行粗分割,然后以每个分割的平均颜色作为节点的代表颜色来构造一个凝聚图。采用归一化切聚类算法,得到具有定义颜色数的调色板,然后重建量化后的图像。在常用的测试图像上进行的实验表明,我们的方法在图像质量、压缩比和计算时间方面与目前最先进的颜色量化方法相比具有很强的竞争力。
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A new approach of color image quantization based on Normalized Cut algorithm
This paper presents a novel color quantization method based on Normalized Cut clustering algorithm, in order to generate a quantized image with the minimum loss of information and the maximum compression ratio, which benefits the storage and transmission of the color image. This new method uses a deformed Median Cut algorithm as a coarse partition of color pixels in the RGB color space, and then take the average color of each partition as the representative color of a node to construct a condensed graph. By employing the Normalized Cut clustering algorithm, we could get the palette with defined color number, and then reconstruct the quantized image. Experiments on common used test images demonstrate that our method is very competitive with state-of-the-art color quantization methods in terms of image quality, compression ratio and computation time.
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