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Fast Adaptive Algorithm for Time-Critical Color Quantization Application

机译:快速自适应算法用于时间关键颜色量化应用

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Color quantization is the process of grouping n data points to k cluster. We proposed a new approach, based on Wu's color quantization. Our approach can significantly reduce the time consumption during the process compared with available methods but still maintain an acceptable quality of color distribution. As a rough rule of thumb, a quantized image with more than 30 dB of PSNR is often indistinguishable from the uncompressed original image. To achieve this requirement, we proposed to put the cutting plane through the centroid of the largest value representing variance box on the 3D-color histogram of color distribution. This plane is perpendicular to the axis, on which the sum of the squared Euclidean distances between the centroid of both sub-boxes and the centroid of the box is greatest. This guarantees that the total variances of sub-boxes are reduced automatically. To speed up the process, we exploited the dynamic programming as Wu [6] used in his approach. Unlike Wu's approach, we replaced the second order moment calculation with a value representing variance. Because variance is not actually used in calculation, a simpler indicator of data scatterness would speed up the process. From our whole process, we achieved approximately 40% less time consumption than Wu's quantizer.
机译:颜色量化是将n个数据点分组到k集群的过程。我们提出了一种基于Wu的颜色量化的新方法。与可用方法相比,我们的方法可以显着减少该过程中的时间消耗,但仍然保持着可接受的颜色分布质量。作为粗略的拇指规则,具有超过30 dB的PSNR的量化图像通常与未压缩的原始图像无法区分。为了实现这一要求,我们建议将切割平面放入Color分布3D颜色直方图上表示方差框的质心。该平面垂直于轴线,在该轴上,两个子箱子的质心和盒子的质心之间的平方欧几里德距离的总和最大。这保证了子箱的总差自动减少。为了加快这个过程,我们利用了他的方法使用的动态编程作为吴[6]。与WU的方法不同,我们用表示方差的值替换了二阶时刻计算。由于在计算中实际上没有使用方差,因此数据散射的更简单指标将加速该过程。从我们的整个过程中,我们实现的时间比吴的量化倍数约为40%。

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