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一种基于矢量量化的数字图像水印技术

A Digital Image Watermarking Technology Based on Vector Quantization
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摘要 基于矢量量化的数字水印技术,在矢量压缩编码过程中,在被保护的图像中嵌入了一种典型的数字水印,水印可以从图像中恢复出来,从而可以在版权争议中有效地为版权方举证。矢量量化密语本中的密语根据不同的特征被定义成不同的组,进而将每个二进制水印比特都嵌入到选定的矢量量化编码块中,特点是水印同时存在于矢量量化压缩图像和矢量量化解码后的重建图像中。因为水印隐藏于压缩图像之中,加入水印的压缩图像具有尺寸小、传递速度快并且存储空间在压缩时可保存的特点,因而代替了原件在因特网上传输。此外,重建的图像具有鲁棒性来防范破坏或消除水印的企图。 Based on digital watermarking technique of vector quantization,in vector coding process,in the protected image in a typical digital watermark is embedded,the watermark can be recovered from the image,which can effectively in a copyright dispute for copyright proof.Whisper of vector quantization in the according to the different characteristics are defined into different groups,then each binary watermark bits are embedded into the selected vector quantization coding block,which is characterized in that the watermark also exist in the vector quantization compression image and vector quantization decoding of reconstruction image.Because the watermark is hidden in the compressed image,the compression image with the watermark has the characteristics of small size,fast transmission speed and the storage space can be saved in the compression,thus replacing the original transmission on the internet.In addition,the reconstructed image is robust to prevent damage or remove the watermark.
机构地区 [ 海军航空兵学院
出处 《计算机与数字工程》 2016年第11期2263-2265,2297,共4页 Computer & Digital Engineering
关键词 数字水印 矢量量化 裁剪攻击 鲁棒性 digital watermarking vector quantization cropping attack robustness
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