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Performance Comparison of Image Block Compressive Sensing Based on Chaotic Sensing Matrix Using Different Basis Matrices

机译:基于不同基矩阵的混沌传感矩阵的图像块压缩检测性能比较

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In this paper, a performance comparison of image block compressive sensing (BSC) based in chebyshew chatotic matrix using different sparse basis matrices is studied. These basis matrices are discrete cosine transform (DCT), discrete Hartley transform (DHT), discrete Fourier transform (DFT), discrete wavelet transform (DWT), and discrete Wash Hadamard transform (WHT), respectively. The test image is divided into sub-blocks, which are transformed into sparse domain by sparse basis. Then the conventional recover algorithm OMP is used to evaluate the image quality. With the number of sub blocks is increasing, the quality of the recovered image becomes deterioration in terms to the peak signal-to-noise ratio. In addition, block compressive sensing based on DWT is the best when the number of blocks of image is 1, 2. On the other hand, when the number of sub block is 4 and 8 cases, the quality of the recovered image based on DCT is the best. For all BSC schemes based on sparse expect DWT basis, the number of sub block has very litter effect on the PRNR of the reconstructed images.
机译:本文研究了使用不同稀疏基矩阵的基于Chebyshew Chatotic Matrix的图像块压缩感应(BSC)的性能比较。这些基础基质是离散余弦变换(DCT),离散Hartley变换(DHT),离散傅立叶变换(DFT),离散小波变换(DWT),和离散洗涤阿达玛变换分别(WHT),。测试图像被分成子块,通过稀疏基础将其转换为稀疏域。然后,传统的恢复算法OMP用于评估图像质量。随着子块的数量增加,回收图像的质量对峰值信噪比的术语变得恶化。另外,基于DWT的块压缩检测是当图像块的数量为1,2时,基于DWT的最佳状态是最佳。另一方面,当子块的数量为4和8例时,基于DCT的恢复图像的质量是最好的。对于基于稀疏预期DWT的所有BSC方案,子块的数量对重建图像的PRNR具有非常垃圾效果。

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