Lossless Compression of Medical Images based on the Differential Probability of Images

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引用次数: 1

Abstract

Lossless compression is crucial in the remote transmission of large-scale medical image and the retainment of complete medical diagnostic information. The lossless compression method of medical image based on differential probability of image is proposed in this study. The medical image with DICOM format was decorrelated by the differential method, and the difference matrix was optimally coded by the Huffman coding method to obtain the optimal compression effect. Experimental results obtained using the new method were compared with those using Lempel–Ziv–Welch, modified run–length encoding, and block–bit allocation methods to verify its effectiveness. For 2-D medical images, the lossless compression effect of the proposed method is the best when the object region is more than 20% of the image. For 3-D medical images, the proposed method has the highest compression ratio among the control methods. The proposed method can be directly used for lossless compression of DICOM images.
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基于图像差分概率的医学图像无损压缩
无损压缩对于远程传输大规模医学图像和保留完整的医学诊断信息至关重要。提出了一种基于图像差分概率的医学图像无损压缩方法。采用差分方法对DICOM格式的医学图像进行去相关处理,并采用霍夫曼编码方法对差分矩阵进行优化编码,以获得最佳压缩效果。实验结果与Lempel-Ziv-Welch、改进的行长编码和块比特分配方法进行了比较,验证了新方法的有效性。对于二维医学图像,当目标区域占图像的20%以上时,所提方法的无损压缩效果最好。对于三维医学图像,该方法在控制方法中具有最高的压缩比。该方法可直接用于DICOM图像的无损压缩。
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