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Diffusion Tensor Visualization with Glyph Packing

机译:带有字形填充的扩散张量可视化

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A common goal of multivariate visualization is to enable data inspection at discrete points, while also illustrating larger-scale continuous structures. In diffusion tensor visualization, glyphs are typically used to meet the first goal, and methods such as texture synthesis or fiber tractography can address the second. We adapt particle systems originally developed for surface modeling and anisotropic mesh generation to enhance the utility of glyph-based tensor visualizations. By carefully distributing glyphs throughout the field (either on a slice, or in the volume) into a dense packing, using potential energy profiles shaped by the local tensor value, we remove undue visual emphasis of the regular sampling grid of the data, and the underlying continuous features become more apparent. The method is demonstrated on a DT-MRI scan of a patient with a brain tumor
机译:多元可视化的一个共同目标是能够在离散点进行数据检查,同时还能说明大规模的连续结构。在扩散张量可视化中,通常使用字形来满足第一个目标,而诸如纹理合成或纤维束摄影等方法可以解决第二个问题。我们采用最初为表面建模和各向异性网格生成而开发的粒子系统,以增强基于字形的张量可视化的实用性。通过使用由局部张量值定形的势能分布图,将字形在整个字段中(在切片上或在体积中)仔细地分布到密集的包装中,我们消除了数据常规采样网格的过度视觉强调,并且消除了底层连续特征变得更加明显。该方法在脑肿瘤患者的DT-MRI扫描中得到证明

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