使用正交独立分量基的图像压缩

Artur J. Ferreira, Mário A. T. Figueiredo
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引用次数: 5

摘要

在本文中,我们讨论了独立分量分析(ICA)的正交化,以获得基于变换的图像编码器。我们考虑了几类训练图像,从中提取独立分量,然后进行正交,获得图像编码的基。实验验证了该方法对自然图像的泛化能力和对特定类别的自适应能力。所提出的固定大小块编码器具有比JPEG更低的变换复杂度。在给定的压缩比范围内,根据标准(信噪比)和感知(图像质量尺度- PQS)测量,它们在几类图像上都优于JPEG。对于某些图像类,使用我们的编码器获得的图像的视觉质量与目前最先进的静止图像编码器JPEG2000获得的图像质量相似。在指纹图像上,我们的固定和可变大小块编码器与FBI开发的基于小波的专用编码器具有竞争力。
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Image compression using orthogonalized independent components bases
In this paper we address the orthogonalization of independent component analysis (ICA) to obtain transform-based image coders. We consider several classes of training images, from which we extract the independent components, followed by orthogonalization, obtaining bases for image coding. Experimental tests show the generalization ability of ICA of natural images, and the adaptation ability to specific classes. The proposed fixed size block coders have lower transform complexity than JPEG. They outperform JPEG, on several classes of images, for a given range of compression ratios, according to both standard (SNR) and perceptual (picture quality scale - PQS) measures. For some image classes, the visual quality of the images obtained with our coders is similar to that obtained by JPEG2000, which is currently the state of the art still image coder. On fingerprint images, our fixed and variable size block coders perform competitively with the special-purpose wavelet-based coder developed by the FBI.
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