高位深体积医学图像的学习无损压缩

IF 13.7
Kai Wang;Yuanchao Bai;Daxin Li;Deming Zhai;Junjun Jiang;Xianming Liu
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引用次数: 0

摘要

基于学习的方法的最新进展显著提高了图像压缩的能力。然而,这些方法在处理高位深体积医学图像时遇到困难,面临性能下降、内存需求增加和处理速度降低等问题。为了解决这些挑战,本文提出了基于比特分割的无损体积图像压缩(BD-LVIC)框架,该框架专为高比特深度医疗体积压缩而设计。BD-LVIC框架巧妙地将高比特深度卷划分为两个低比特深度段:最有效比特卷(MSBV)和最低有效比特卷(LSBV)。MSBV专注于体积医学图像中最重要的位,以紧凑的方式捕捉重要的结构细节。这种复杂性的降低大大提高了使用传统编解码器的压缩效率。相反,LSBV处理的是包含复杂纹理细节的最低有效位。为了有效地压缩这些详细信息,我们引入了一个有效的基于学习的压缩模型,该模型配备了一个基于变压器的特征对齐模块,该模块利用片内和片间冗余来精确对齐特征。随后,并行自回归编码模块合并这些特征,以精确估计最低有效位平面的概率分布。我们的广泛测试表明,BD-LVIC框架不仅在各种数据集上设置了新的性能基准,而且还保持了具有竞争力的编码速度,突出了其在体积医学图像压缩领域的巨大潜力和实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Lossless Compression for High Bit-Depth Volumetric Medical Image
Recent advances in learning-based methods have markedly enhanced the capabilities of image compression. However, these methods struggle with high bit-depth volumetric medical images, facing issues such as degraded performance, increased memory demand, and reduced processing speed. To address these challenges, this paper presents the Bit-Division based Lossless Volumetric Image Compression (BD-LVIC) framework, which is tailored for high bit-depth medical volume compression. The BD-LVIC framework skillfully divides the high bit-depth volume into two lower bit-depth segments: the Most Significant Bit-Volume (MSBV) and the Least Significant Bit-Volume (LSBV). The MSBV concentrates on the most significant bits of the volumetric medical image, capturing vital structural details in a compact manner. This reduction in complexity greatly improves compression efficiency using traditional codecs. Conversely, the LSBV deals with the least significant bits, which encapsulate intricate texture details. To compress this detailed information effectively, we introduce an effective learning-based compression model equipped with a Transformer-Based Feature Alignment Module, which exploits both intra-slice and inter-slice redundancies to accurately align features. Subsequently, a Parallel Autoregressive Coding Module merges these features to precisely estimate the probability distribution of the least significant bit-planes. Our extensive testing demonstrates that the BD-LVIC framework not only sets new performance benchmarks across various datasets but also maintains a competitive coding speed, highlighting its significant potential and practical utility in the realm of volumetric medical image compression.
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