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首页> 外文期刊>International Journal of Information Acquisition >STATISTICAL MODELING FOR LEARNING VECTOR QUANTIZER CODEBOOK DESIGN IN THE WAVELET DOMAIN
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STATISTICAL MODELING FOR LEARNING VECTOR QUANTIZER CODEBOOK DESIGN IN THE WAVELET DOMAIN

机译:小波域学习矢量量化代码库设计的统计建模。

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摘要

A statistical approach for modeling the code vectors designed using a supervised learning neural network is proposed in this paper. Since wavelet-based compression is more robust under transmission and decoding errors, the proposed work is implemented in the wavelet domain. Two crucial issues in compression methods are the coding efficiency and the psycho visual quality achieved while modeling different image regions. In this paper, a high performance wavelet coder which provides a new framework for handling these issues in a simple and effective manner is proposed. First the input image is subjected to wavelet transform. Then the transformed coefficients are subjected to Quantization followed by the well known Huffman Encoder. In the Quantization process, initially a codebook is designed using Learning Vector Quantizer. Since codebook is an essential component for the reconstructed image quality and also to exploit the spatial energy compaction of the codevectors, the codebook is further modeled using Savitzky-Golay polynomial. Experimental results show that the proposed work gives better results in terms of PSNR that are competitive with the state-of-art coders in literature.
机译:本文提出了一种使用监督学习神经网络对代码向量进行建模的统计方法。由于基于小波的压缩在传输和解码错误下更鲁棒,因此在小波域中实现了提出的工作。压缩方法中的两个关键问题是编码效率和对不同图像区域进行建模时所获得的心理视觉质量。本文提出了一种高性能的小波编码器,它提供了一种以简单有效的方式处理这些问题的新框架。首先,对输入图像进行小波变换。然后,对变换后的系数进行量化,然后进行众所周知的霍夫曼编码器。在量化过程中,最初使用“学习矢量量化器”设计一本密码本。由于码本是重构图像质量以及利用码矢量的空间能量压缩的必要组成部分,因此,使用Savitzky-Golay多项式对码本进行了进一步建模。实验结果表明,所提出的工作在PSNR方面可以提供更好的结果,与文献上的最新编码器相比具有竞争力。

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