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A Survey of Mathematical Structures for Extending 2D Neurogeometry to 3D Image Processing

机译:一种延伸2D神经诊断3D图像处理的数学结构调查

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In the Big Data landscape, learning algorithms are often "black-boxes" and as such, hard to interpret. We need new constructive models, to eventually feed the Big Data framework. The emerging field of Neurogeometry provides inspiration for models in medical computer vision. Neurogeometry models the neuronal architecture of the visual cortex through Differential Geometry. First, Neurogeometry can explain visual phenomena like human perceptual completion. And second, it provides efficient algorithms for computer vision. Examples of applications are image completion (in-painting) and crossing-preserving smoothing. In medical computer vision, Neurogeometry is less known. One reason is that one often deals with 3D images, whereas Neurogeometry is essentially 2D (our retina is 2D). Moreover, the generalization to 3D is not mathematically straight-forward. This article presents the theoretical framework of a 3D-Neurogeometry inspired by the 2D case. The aim is to provide a "theoretical toolbox" and inspiration for new models in 3D medical computer vision.
机译:在大数据景观中,学习算法通常是“黑匣子”,因此很难解释。我们需要新的建设模型,最终喂养大数据框架。神经诊断的新兴领域为医疗计算机视觉模型提供了灵感。神经元测定通过差分几何形状模拟视觉皮质的神经元架构。首先,神经诊断可以解释人类感知完成等视觉现象。其次,它为计算机愿景提供了有效的算法。应用的示例是图像完成(绘画)和交叉保持平滑。在医疗计算机视觉中,神经元测定较少。一个原因是人们经常涉及3D图像,而神经诊断基本上是2D(我们的视网膜是2D)。此外,3D的概括不是在数学上直接的。本文介绍了由2D案例的3D-Neurogeometry的理论框架。目的是为3D医疗计算机视觉中的新模型提供“理论工具箱”和灵感。

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