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A GENERAL FRAMEWORK FOR GEOMETRY-DRIVEN EVOLUTION EQUATIONS

机译:几何驱动演化方程的一般框架

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This paper presents a general framework to generate multi-scale representations of image data. The process is considered as an initial value problem with an acquired image as initial condition and a geometrical invariant as ''driving force'' of an evolutionary process. The geometrical invariants are extracted using the family of Gaussian derivative operators. These operators naturally deal with scale as a free parameter and solve the ill-posedness problem of differentiation. Stability requirements for numerical approximation of evolution schemes using Gaussian derivative operators are derived and establish an intuitive connection between the allowed time-step and scale. This approach has been used to generalize and implement a variety of nonlinear diffusion schemes. Results on test images and medical images are shown. [References: 55]
机译:本文提出了一个通用框架来生成图像数据的多尺度表示。该过程被认为是一个初始值问题,以获取的图像为初始条件,几何不变性为进化过程的“驱动力”。使用高斯导数算子族提取几何不变量。这些算子自然地将尺度作为自由参数来处理,并解决了微分不适的问题。推导了使用高斯导数算子对演化方案进行数值逼近的稳定性要求,并在允许的时间步长和标度之间建立了直观的联系。该方法已被用来概括和实现各种非线性扩散方案。显示了测试图像和医学图像的结果。 [参考:55]

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