基于非线性偏微分方程的特征保留有损图像压缩

T. Chan, Haotian Zhou
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引用次数: 9

摘要

只提供摘要形式。我们考虑了高噪声图像的高损耗压缩的可能性,例如来自ATR, ATM和监视成像的图像,这些图像是在高噪声环境中拍摄的。我们的目标是在经过高损失压缩后,仍然保留图像的显著特征(边缘),从而可以很好地识别物体的形状和位置。对于噪声非常大的图像,高损耗小波压缩通常会导致特征损失,因为边缘会产生高频,并且会随着噪声一起被去除。我们提出了一种保留特征的去噪方法,然后进行小波硬阈值压缩,得到保留特征的高比率压缩。特别地,我们考虑了全变分(TV)去噪方法,它可以在保持边缘的情况下平滑高频噪声。数值实验表明,电视去噪图像的小波系数越来越接近于零,最终可以在压缩过程中被去除,而边缘产生的系数仍然较大,因此可以自动保留。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature preserving lossy image compression using nonlinear PDEs
Summary form only given. We consider the possibility of high loss compression of very noisy images such as images from ATR, ATM and surveillance imaging, in which images are taken in a high noise environment. Our goal is that after the high loss compression, the salient features (edges) of the images will be still preserved so that the shape and location of the objects can be well recognized. For very noisy images, high loss wavelet compression usually results in feature loss since edges generate high frequencies and they are removed along with the noise. We advocate a feature-retaining denoising method, followed by wavelet hard thresholding compression to get a high ratio compression which still keeps the features. In particular, we consider the total variation (TV) denoising method which can smooth out the high frequency noise while keeping the edges. Numerical experiments indicate that more wavelet coefficients of the TV-denoised images are closer to zero so that they can be eventually removed in the compression process while the coefficients that are generated by the edges are still relatively large and therefore automatically retained.
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