论文标题

Wasserstein图像本地分析:方向的直方图,平滑和边缘检测

Wasserstein Image Local Analysis: Histogram of Orientations, Smoothing and Edge Detection

论文作者

Zhu, Jiening, Veeraraghavan, Harini, Norton, Larry, Deasy, Joseph O., Tannenbaum, Allen

论文摘要

定向梯度的直方图是广泛使用的图像特征,它基于数值差异描述了局部图像方向性。由于其不良的性质,小噪声可能导致较大的错误。传统的猪可能无法在存在噪声的情况下产生有意义的方向性,这在医学射线照相成像中很常见。我们通过将本地图像贴片的最佳传输图用于其平均值的单色斑块,从新颖的角度解决方向性问题。我们将运输图分解为不同方向的子工作成本。我们评估了最佳运输从TCIA的多形胶质母细胞瘤患者的脑MRI图像定量肿瘤异质性的能力。通过考虑肿瘤区域内提取的局部方向性的熵差,我们发现其图像中熵较高的患者的总体生存率较差(p $ = 0.008 $),这表明在许多方向上表现出流动的肿瘤可能更加恶性,也许反映了高肿瘤组织学等级,一种反映了组织学分解的反射。我们还探索了解决经典图像处理问题的可能性,例如通过最佳传输进行平滑和边缘检测。通过寻找具有最小传输距离到本地贴片的2色贴片,我们得出了一个非线性冲击滤波器,该滤波器可保留边缘。此外,我们发现计算的2色贴片的色差表明颜色的变化很大,即给定贴片中的边缘。总而言之,我们扩大了最佳传输作为图像局部分析工具的实用性,以提取成像肿瘤异质性的强大度量,以进行预测和图像预处理。由于其强大的性质,我们发现它比经典方法具有多种优势。

The Histogram of Oriented Gradient is a widely used image feature, which describes local image directionality based on numerical differentiation. Due to its ill-posed nature, small noise may lead to large errors. Conventional HOG may fail to produce meaningful directionality results in the presence of noise, which is common in medical radiographic imaging. We approach the directionality problem from a novel perspective by the use of the optimal transport map of a local image patch to a uni-color patch of its mean. We decompose the transport map into sub-work costs in different directions. We evaluated the ability of the optimal transport to quantify tumor heterogeneity from brain MRI images of patients with glioblastoma multiforme from the TCIA. By considering the entropy difference of the extracted local directionality within tumor regions, we found that patients with higher entropy in their images, had statistically significant worse overall survival (p $=0.008$), which indicates that tumors exhibiting flows in many directions may be more malignant, perhaps reflecting high tumor histologic grade, a reflection of histologic disorganization. We also explored the possibility of solving classical image processing problems such as smoothing and edge detection via optimal transport. By looking for a 2-color patch with minimum transport distance to a local patch, we derive a nonlinear shock filter, which preserves edges. Moreover, we found that the color difference of the computed 2-color patch indicates whether there is a large change in color, i.e., an edge in the given patch. In summary, we expand the usefulness of optimal transport as an image local analysis tool, to extract robust measures of imaging tumor heterogeneity for outcomes prediction as well as image pre-processing. Because of its robust nature, we find it offers several advantages over the classical approaches.

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