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应用神经网络的图像分类矢量量化编码
引用本文:赵迎春,钱源诚.应用神经网络的图像分类矢量量化编码[J].通信学报,1994,15(1):1-7.
作者姓名:赵迎春  钱源诚
作者单位:合肥工业大学
摘    要:矢量量化作为一种有效的图像数据压缩技术,越来越受到人们的重视。设计矢量量化器的经典算法LBG算法,由于运算复杂,从而限制了矢量量化的实用性。本文讨论了应用神经网络实现的基于边缘特征分类的矢量量化技术。它是根据人的视觉系统对图象的边缘的敏感性,应用模式识别技术,在对图像编码前,以边缘为特征对图像内容分类,然后再对每类进行矢量量化。除特征提取是采用离散余弦变换外,图像的分类和矢量量化都是由神经网络完成

关 键 词:矢量量化  神经网络  图像编码

Classified VQ Coding of Image Using Neural Network
Zhao Yingchun,Qian Yuancheng, Pan Mengxian.Classified VQ Coding of Image Using Neural Network[J].Journal on Communications,1994,15(1):1-7.
Authors:Zhao Yingchun  Qian Yuancheng  Pan Mengxian
Affiliation:Hefei University of Technology.Hefei 254711
Abstract:Recently the vector quantization(VQ) has received considerable interests as a powerful image data compression technique.The most popular algorithm for VQ codebook design has been the LBG.While the LBG algorithm and its variants have been widely studied,the practical application of VQ has been limitted because of the prohibitive amounts of computation associated with both the vector encoding and the codebook design stages.In this paper,we describe the use of self-organizing neural networks in the image classified VQ(CVQ) based on edge feature classification.The principle of this technique is:According to human visual system s sensitivity to image edges,using pattern recognition technique to classify the image data into several classes based on edge features,then encoding every class of data with VQ.All computation,except for the edge feature extraction which is performed by DCT,are carried out by neural networks.The experiment results show,compared to direct image VQ coding without classification,both the compression ratio and image quality are well improved.
Keywords:vector quantization  self-organizing neural network  edge feature extraction  cosine transform  
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