Evolutionary fractal image compression

D. Saupe, M. Ruhl
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引用次数: 71

Abstract

This paper introduces evolutionary computing to fractal image compression. In fractal image compression a partitioning of the image into ranges is required. We propose to use evolutionary computing to find good partitionings. Here ranges are connected sets of small square image blocks. Populations consist of N/sub p/ configurations, each of which is a partitioning with a fractal code. In the evolution each configuration produces /spl sigma/ children who inherit their parent partitionings except for two random neighboring ranges which are merged. From the offspring the best ones are selected for the next generation population based on a fitness criterion (collage error). We show that a far better rate-distortion curve can be obtained with this approach as compared to traditional quad-tree partitionings.
演化分形图像压缩
将进化计算引入到分形图像压缩中。在分形图像压缩中,需要对图像进行范围划分。我们建议使用进化计算来找到好的分区。这里的范围是小正方形图像块的连接集。种群由N/sub p/个构型组成,每个构型都是一个分形编码的分区。在演化过程中,每个构型产生/spl sigma/子构型,这些子构型继承了它们的父分区,除了两个随机相邻的被合并的范围。根据适应度标准(拼贴误差)从后代中选出最优的后代作为下一代种群。我们表明,与传统的四叉树划分相比,这种方法可以获得更好的率失真曲线。
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