基于自适应联想记忆的码本学习与霍夫曼编码相结合的优化矢量量化

A. Kawabata, T. Koide, H. Mattausch
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引用次数: 3

摘要

在矢量量化的码本优化研究中,采用了一种关联存储架构,在已有的参考数据中搜索最相似的数据。为了实现新码本数据的学习功能,实现了一种基于这种联想记忆的学习算法,该算法模仿了人类短时/长时记忆的概念。利用所提出的学习算法对矢量量化码本进行质量改进,并利用图像质量指标——峰值信噪比(PSNR)评估改进的学习参数依赖性。定量的PSNR提高了2.5 - 3.0 dB。由于学习算法根据码本元素的使用频率对其进行矢量量化处理,因此在此基础上增加了霍夫曼编码,并经过验证,进一步将压缩比从12.8提高到14.1。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization Vector Quantization by Adaptive Associative-Memory-Based Codebook Learning in Combination with Huffman Coding
In the presented research on codebook optimization for vector quantization, an associative memory architecture is applied, which searches the most similar data among previously stored reference data. For realizing the learning function of new codebook data, a learning algorithm is implemented, which is based on this associative memory and which imitates the concept of the human short/long-term memory. The quality improvement of the codebook for vector quantization, created with the proposed learning algorithm, and the learning-parameter dependence of the improvement is evaluated with the Peak Signal Noise Ratio (PSNR), which is an index of the image quality. A quantitative PSNR improvement of 2.5 – 3.0 dB could be verified. Since the learning algorithm orders the codebook elements according to their usage frequency for the vector-quantization process, Huffman coding is additionally applied, and is verified to further improve the compression ratio from 12.8 to 14.1.
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