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首页> 外文期刊>Journal of medical engineering & technology >Joint thresholding and quantizer selection for compression of medical ultrasound images in the wavelet domain.
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Joint thresholding and quantizer selection for compression of medical ultrasound images in the wavelet domain.

机译:小波域中医学超声图像压缩的联合阈值和量化器选择。

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This paper introduces a simple and efficient technique for compression of medical ultrasound (US) images in the wavelet domain. The statistics of subband wavelet coefficients are modelled using the generalized Gaussian distribution (GGD). By exploiting these statistics, a uniform scalar quantizer is designed which adapts very well to the changing statistics of the signal across various subbands and scales. To increase the quantization performance, a threshold is chosen adaptively to zero-out the insignificant wavelet coefficients in the detail subbands before quantization. A distinctive feature of the proposed technique is that it unifies the two approaches to image adaptive coding: rate-distortion (R-D) optimized quantizer selection and R-D optimal thresholding, in order to increase the compression performance of the coder. The operational R-D criterion used for joint optimization is derived in the minimum description length (MDL) framework. The experimental results show that the joint R-D optimization leads to significant improvement in the compression performance of the proposed coder, named JTQ-WV, over the best state-of-the-art image coder, SPIHT. For example, the coding of US images at 0.25 bpp by JTQ-WV yields a PSNR gain of 1.0 dB over the benchmark SPIHT.
机译:本文介绍了一种在小波域中压缩医学超声(US)图像的简单有效的技术。使用广义高斯分布(GGD)对子带小波系数的统计量进行建模。通过利用这些统计数据,设计出了一种统一的标量量化器,它非常适合跨各个子带和各个尺度变化的信号统计数据。为了提高量化性能,在量化之前自适应地选择阈值以将细节子带中的无关紧要的小波系数归零。所提出的技术的一个显着特征是它统一了两种图像自适应编码方法:率失真(R-D)优化的量化器选择和R-D最佳阈值,以提高编码器的压缩性能。用于联合优化的可操作R-D标准是在最小描述长度(MDL)框架中得出的。实验结果表明,与最佳的最新图像编码器SPIHT相比,联合的R-D优化导致所提出的编码器JTQ-WV的压缩性能有了显着提高。例如,JTQ-WV对0.25 bpp的US图像进行编码会在基准SPIHT上产生1.0 dB的PSNR增益。

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