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Neural networks for classified vector quantization of images

机译:用于图像分类矢量量化的神经网络

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Abstract: Recently, vector quantization (VQ) has received considerable attention and become an effective tool for image compression. It provides high compression ratios and simple decoding processes. However, studies on practical implementation of VQ have revealed some major difficulties such as edge integrity and codebook design efficiency. Over the past few years, a new wave of research in neural networks has emerged. Neural networks models have provided an effective alternative to solving computationally intensive problems. In this paper, we propose to implement VQ for image compression based on neural networks. Separate codebooks for edge and background blocks are designed using Kohonen self- organizing feature maps to preserve edge integrity and improve the efficiency of codebook design. Improved image quality has bee achieved and the comparability of new attempts with existing VQ approaches has been demonstrated with experimental results.!8
机译:摘要:最近,向量量化(VQ)已引起了广泛的关注,并已成为一种有效的图像压缩工具。它提供了高压缩率和简单的解码过程。但是,有关VQ实际实施的研究表明,存在一些主要困难,例如边缘完整性和码本设计效率。在过去的几年中,神经网络研究出现了新的浪潮。神经网络模型为解决计算密集型问题提供了有效的替代方法。在本文中,我们提出基于神经网络的图像压缩实现VQ。使用Kohonen自组织特征图设计了用于边缘和背景块的单独代码簿,以保留边缘完整性并提高代码簿设计的效率。实验结果证明了改善的图像质量,并证明了新尝试与现有VQ方法的可比性!8

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