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Compression of remote sensing image based on listless zerotree coding and DPCM

机译:基于Listless Zerotree编码和DPCM的遥感图像压缩

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The data quantity of remote sensing image is very large. Furthermore, the lowest frequency subband contains the main energy of original image and reflects the coarse of original image after remote sensing image is transformed by wavelet, so it is very important to the reconstructed image. Therefore a hybrid image compression method based on Listless Zerotree Coding (LZC) and DPCM is presented, namely, the lowest frequency subband is compressed by DPCM and others are compressed by LZC. LZC is a kind of zerotree coding algorithm for hardware implementation, which is based on SPIHT and substitutes two significant bit maps for three lists in SPIHT algorithm. Thereby LZC significantly reduces the memory requirement and complexity during encoding and decoding procedure. But LZC doesn't recognize the significance of grandchild sets, so the PSNR values of LZC are lower than SPIHT's and the compression speed drops. It is improved by adding a significant bit map that recognizes the significance of grandchild sets. A comparison reveals that the PSNR results of the hybrid compression method are 2 dB higher than those of LZC, and the compression speed is also improved.
机译:遥感图像的数据量是非常大的。此外,最低频率子带含有原始图像的主要能量和反映原图像的粗遥感图像进行小波变换之后,所以它是重建的图像非常重要。因此提出了一种基于链表零树编码(LZC)和DPCM的混合的图像压缩方法,即,最低频率子带是通过DPCM压缩和其它目的通过LZC压缩。 LZC是一种零树编码算法的硬件实现,它是基于SPIHT的代用品在SPIHT算法三个列表2个显著位图的。从而LZC显著减少编码和解码过程期间对存储器的要求和复杂性。但LZC不承认的孙子套的意义,所以LZC的PSNR值比SPIHT的和压缩速度降低。它是通过将显著位图识别的孙子套的重要性提高。的比较揭示的混合压缩方法的PSNR结果2分贝比LZC的更高,压缩速度也提高。

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