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Evolutionary fuzzy particle swarm optimization vector quantization learning scheme in image compression

机译:图像压缩中的进化模糊粒子群优化矢量量化学习方案

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This article develops an evolutional fuzzy particle swarm optimization (FPSO) learning algorithm to self extract the near optimum codebook of vector quantization (VQ) for carrying on image compression. The fuzzy particle swarm optimization vector quantization (FPSOVQ) learning schemes, combined advantages of the adaptive fuzzy inference method (FIM), the simple VQ concept and the efficient particle swarm optimization (PSO), are considered at the same time to automatically create near optimum codebook to achieve the application of image compression. The FIM is known as a soft decision to measure the relational grade for a given sequence. In our research, the FIM is applied to determine the similar grade between the codebook and the original image patterns. In spite of popular usage of Linde-Buzo-Grey (LBG) algorithm, the powerful evolutional PSO learning algorithm is taken to optimize the fuzzy inference system, which is used to extract appropriate codebooks for compressing several input testing grey-level images. The proposed FPSOVQ learning scheme compared with LBG based VQ learning method is presented to demonstrate its great result in several real image com-pression examples.
机译:本文开发了一种进化模糊粒子群优化(FPSO)学习算法,可以自我提取矢量量化(VQ)的接近最佳码本以进行图像压缩。同时考虑模糊粒子群优化矢量量化(FPSOVQ)学习方案,自适应模糊推理方法(FIM),简单VQ概念和有效粒子群优化(PSO)的优点,以自动创建接近最优码本来实现图像压缩的应用。 FIM被称为软判决,用于测量给定序列的关系等级。在我们的研究中,FIM用于确定码本和原始图像图案之间的相似等级。尽管广泛使用Linde-Buzo-Grey(LBG)算法,但仍采用功能强大的进化PSO学习算法来优化模糊推理系统,该系统可用于提取适当的码本以压缩多个输入测试灰度级图像。提出的FPSOVQ学习方案与基于LBG的VQ学习方法相比,在几个真实的图像压缩示例中证明了其出色的效果。

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