Robust Detection and Lossless Compression of the Foreground in Magnetic Resonance Images

Andres Corvetto, Ana M. C. Ruedin, D. Acevedo
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引用次数: 4

Abstract

We present a collection of techniques for robust detection of the foreground (as opposed to background) in a MR volumetric image. A novel voting strategy makes our compressor more reliable. The image in which the background has been assigned a zero value is then losslessly compressed by another collection of techniques including a novel ordering of blocks to exploit an adaptive arithmetic coder. The image is segmented into few classes. Quantized data (represented by an index map and a codebook) and quantization differences are encoded separately. Correlations between slices are reduced by differential coding of the index map for consecutive slices. Correlations in the 3 dimensions are further reduced by an integer wavelet transform and by class-contextual arithmetic encoding of the quantization differences. Our compressor outperforms JPEG-LS, JPEG2000, SPIHT, and 3D-SPIHT.
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磁共振图像前景的鲁棒检测与无损压缩
我们提出了一套技术,用于鲁棒检测前景(而不是背景)在MR体积图像。一种新颖的投票策略使我们的压缩机更加可靠。背景被赋为零值的图像然后被另一组技术进行无损压缩,其中包括利用自适应算术编码器的新颖块排序。图像被分割成几个类。量化数据(由索引映射和代码本表示)和量化差异分别编码。通过对连续片的索引映射进行差分编码,降低了片之间的相关性。通过整数小波变换和量化差异的类上下文算法编码,进一步降低了3个维度的相关性。我们的压缩机优于JPEG-LS, JPEG2000, SPIHT和3D-SPIHT。
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