高密度运动向量场的稀疏表示用于四维医学CT数据的无损压缩

Andreas Weinlich, P. Amon, A. Hutter, André Kaup
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引用次数: 1

摘要

提出了一种动态医学体数据中密集向量场的自适应压缩方法。用于视频压缩时间预测的传统基于块的运动补偿不能方便地处理随时间编码的医学图像序列中常见的可变形运动。基于光流方法计算的两个连续切片之间的生理组织运动在时间方向上的近似,我们找到了最重要的运动向量,就它们对第一个二维切片的第二个二维切片的预测能力而言。通过对这些向量的组成部分进行编码,我们能够在解码器处仅使用最小的侧信息重建高质量的密集运动向量场。我们表明,我们的方法可以比基于块的运动补偿对这些数据实现更平滑的预测,减少了空间预测无损压缩的存储需求。我们还表明,这种预测方法可以产生比JPEG 2000内编码更好的压缩比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse representation of dense motion vector fields for lossless compression of 4-D medical CT data
We present a new method for data-adaptive compression of dense vector fields in dynamic medical volume data. Conventional block-based motion compensation used for temporal prediction in video compression cannot conveniently cope with deformable motion typically found in medical image sequences encoded over time. Based on an approximation of physiologic tissue motion between two succeeding slices in time direction computed by optical flow methods, we find the most significant motion vectors with respect to their prediction capability for a second 2-D slice out of the first one. By coding the components of these vectors, we are able to reconstruct a high quality dense motion vector field at the decoder using only minimal side-information. We show that our approach can achieve a smoother prediction than block-based motion compensation for such data, reducing storage demands in spatially predictive lossless compression. We also show that such a predictive approach can yield better compression ratios than JPEG 2000 intra coding.
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