首页> 外文会议>Conference on Wavelets: Applications in Signal and Image Processing Ⅸ Jul 30-Aug 1, 2001, San Diego, USA >Extension of wavelet compression algorithms to 3D and 4D image data: Exploitation of data coherence in higher dimensions allows very high compression ratios
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Extension of wavelet compression algorithms to 3D and 4D image data: Exploitation of data coherence in higher dimensions allows very high compression ratios

机译:将小波压缩算法扩展到3D和4D图像数据:利用更高维度的数据一致性,可以实现非常高的压缩率

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摘要

High resolution multidimensional image data yield huge datasets. For compression and analysis, 2D approaches are often used, neglecting the information coherence in higher dimensions, which can be exploited for improved compression. We designed a wavelet compression algorithm suited for data of arbitrary dimensions, and assessed its ability for compression of 4D medical images. Basically, separable wavelet transforms are done in each dimension, followed by quantization and standard coding. Results were compared with conventional 2D wavelet. We found that in 4D heart images, this algorithm allowed high compression ratios, preserving diagnostically important image features. For similar image quality, compression ratios using the 3D/4D approaches were typically much higher (2-4 times per added dimension) than with the 2D approach. For low-resolution images created with the requirement to keep predefined key diagnostic information (contractile function of the heart), compression ratios up to 2000 could be achieved. Thus, higher-dimensional wavelet compression is feasible, and by exploitation of data coherence in higher image dimensions allows much higher compression than comparable 2D approaches. The proven applicability of this approach to multidimensional medical imaging has important implications especially for the fields of image storage and transmission and, specifically, for the emerging field of telemedicine.
机译:高分辨率多维图像数据产生了巨大的数据集。对于压缩和分析,通常使用2D方法,而忽略了较高维度上的信息一致性,可以将其用于改进的压缩。我们设计了一种适用于任意尺寸数据的小波压缩算法,并评估了其压缩4D医学图像的能力。基本上,可分离的小波变换在每个维度上完成,然后进行量化和标准编码。将结果与常规2D小波进行比较。我们发现在4D心脏图像中,该算法允许较高的压缩率,并保留了诊断上重要的图像特征。对于相似的图像质量,使用3D / 4D方法的压缩率通常要比使用2D方法的压缩率高得多(每个附加尺寸2-4倍)。对于需要保留预定义的关键诊断信息(心脏的收缩功能)而创建的低分辨率图像,可以实现高达2000的压缩率。因此,高维小波压缩是可行的,并且通过利用较高图像尺寸中的数据相干性,可以实现比同类2D方法高得多的压缩。这种方法在多维医学成像中的行之有效的应用具有重要意义,特别是对于图像存储和传输领域,尤其是对新兴的远程医疗领域。

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