Experiments with single-pass adaptive vector quantization

F. Rizzo, J. Storer, B. Carpentieri
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引用次数: 3

Abstract

Summary form only given. Constantinescu and Storer (1994) introduced an adaptive vector quantization algorithm (AVQ) that combines adaptive dictionary techniques with vector quantization (VQ). The algorithm typically equals or exceeds the compression of the JPEG standard on different classes of images and it often outperforms traditional trained VQ. We show how it is possible to improve AVQ on the class of images on which JPEG does best (i.e., "magazine photographs"). The improvement is possible by exploring the similarities in the dictionary built by AVQ. This is achieved by transforming the input vectors in a way similar to the one used in mean-shape-gain VQ (Oehler and Gray, 1993). In MSGVQ each vector x~/spl isin/R/sup n/ is decomposed as x~=g/spl middot/s~+E/sub x//spl middot/1~, where g=/spl par/x~-E/sub x//spl middot/1~/spl par/ and s~=(x~-E/sub x//spl middot/1~)/g; mean, gain and shape are quantized separately. We apply this idea to AVQ, changing the match heuristic: let and be respectively the of the dictionary block b and of the one anchored in p. The entry b is the best match if d(x~/sub p/,x/spl circ/)/spl les/T (x/spl circ/=g/sub p//spl middot/s~/sub b/+E/sub p//spl middot/1~) and its size is maximum. The triple is entropy coded and sent to the decoder. This simple modification of the match heuristic allows AVQ to improve the compression ratio on many images. In some cases this improvement is as high as 60%. Along with the better compression results, there is also an improvement in the overall visual quality of the decoded image, especially at high compression rate.
单次自适应矢量量化实验
只提供摘要形式。Constantinescu和stover(1994)提出了一种自适应矢量量化算法(AVQ),该算法将自适应字典技术与矢量量化(VQ)相结合。该算法在不同类别的图像上通常等于或超过JPEG标准的压缩,并且通常优于传统的训练VQ。我们展示了如何在JPEG最擅长的图像类别(即“杂志照片”)上提高AVQ。这种改进可以通过探索AVQ构建的词典中的相似性来实现。这是通过以类似于平均形状增益VQ中使用的方式变换输入向量来实现的(Oehler和Gray, 1993)。在MSGVQ中,各向量x~/spl isin/R/sup n/分解为x~=g/spl middot/s~+E/sub x//spl middot/1~,其中g=/spl par/x~-E/sub x//spl middot/1~/spl par/, s~=(x~-E/sub x//spl middot/1~)/g;均值、增益和形状分别量化。我们将这一思想应用到AVQ中,改变匹配启发式:让和分别为字典块b和锚定在p中的块。如果d(x~/sub p/,x/spl circ/)/spl les/T (x/spl circ/=g/sub p//spl middot/s~/sub b/+E/sub p//spl middot/1~)且其大小最大,则条目b是最佳匹配。这三个是熵编码并发送到解码器。这种对匹配启发式的简单修改允许AVQ提高许多图像的压缩比。在某些情况下,这种改善高达60%。随着压缩效果的改善,解码图像的整体视觉质量也有所提高,特别是在高压缩率下。
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