Hybrid learning methods for vector quantization and its to image compression

Noritaka Shigei, H. Miyajima, M. Maeda, S. Fukumoto
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Abstract

Neural networks for vector quantization such as K-means, neural-gas (NG) network and Kohonen's self-organizing map (SOM) is proposed. K-means, which is a "hard-max" approach, converges very fast, but it easily falls into local minima. On the other hand, the NG and SOM methods, which are "soft-max" approaches, are good at the global search ability. Though NG and SOM exhibit better performance in coming close to the optimum than K-means, they converge slower than K-means. In order to the drawbacks that exist when K-means, NG and SOM are used individually, we have developed hybrid methods such as NG-K and SOM-K. This paper investigates the effectiveness of NG- K and SOM-K in an image compression application. Our simulation results show that NG-K and SOM-K have good scalability to the number of weight vectors.
矢量量化的混合学习方法及其在图像压缩中的应用
提出了K-means、Neural -gas (NG)网络和Kohonen’s自组织映射(SOM)等矢量量化神经网络。K-means是一种“硬最大值”方法,收敛速度非常快,但很容易陷入局部最小值。另一方面,作为“软最大”方法的NG和SOM方法具有较好的全局搜索能力。虽然NG和SOM在接近最优方面表现出比K-means更好的性能,但它们的收敛速度比K-means慢。为了克服单独使用K-means、NG和SOM时存在的缺点,我们开发了NG- k和SOM- k等混合方法。本文研究了NG- K和SOM-K在图像压缩应用中的有效性。仿真结果表明,NG-K和SOM-K对权向量的数量具有良好的可扩展性。
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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