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A Universal PCA for Image Compression

机译:用于图像压缩的通用PCA

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摘要

In recent years, principal component analysis (PCA) has attracted great attention in image compression. However, since the compressed image data include both the transformation matrix (the eigenvectors) and the transformed coefficients, PCA cannot produce the performance like DCT (Discrete Cosine Transform) in respect of compression ratio. In using DCT, we need only to preserve the coefficients after transformation, because the transformation matrix is universal in the sense that it can be used to compress all images. In this paper we consider to build a universal PCA by proposing a hybrid method called k-PCA. The basic idea is to construct k sets of eigenvectors for different image blocks with distinct characteristics using some training data. The k sets of eigenvectors are then used to compress all images. Vector quantization (VQ) is adopted here to split the training data space. Experimental results show that the proposed approach, although simple, is very efficient.
机译:近年来,主成分分析(PCA)在图像压缩中引起了极大的关注。但是,由于压缩图像数据包括变换矩阵(本征矢量)和变换系数两者,因此,PCA在压缩率方面不能产生像DCT(离散余弦变换)那样的性能。在使用DCT时,我们只需要保留变换后的系数,因为在可以将其用于压缩所有图像的意义上,变换矩阵是通用的。在本文中,我们考虑通过提出一种称为k-PCA的混合方法来构建通用PCA。基本思想是使用一些训练数据为具有不同特征的不同图像块构造k个特征向量集。然后,使用k组特征向量压缩所有图像。这里采用矢量量化(VQ)来分割训练数据空间。实验结果表明,该方法虽然简单,但却非常有效。

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