首页> 外文会议>International Conference on Scale-Space and PDE Methods in Computer Vision; 20050407-09; Hofgeismar(DE) >GET: The Connection Between Monogenic Scale-Space and Gaussian Derivatives
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GET: The Connection Between Monogenic Scale-Space and Gaussian Derivatives

机译:GET:单尺度尺度空间与高斯导数之间的联系

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In this paper we propose a new operator which combines advantages of monogenic scale-space and Gaussian scale-space, of the monogenic signal and the structure tensor. The gradient energy tensor (GET) defined in this paper is based on Gaussian derivatives up to third order using different scales. These filters are commonly available, separable, and have an optimal uncertainty. The response of this new operator can be used like the monogenic signal to estimate the local amplitude, the local phase, and the local orientation of an image, but it also allows to measure the coherence of image regions as in the case of the structure tensor. Both theoretically and in experiments the new approach compares favourably with existing methods.
机译:在本文中,我们提出了一种结合单基因尺度空间和高斯尺度空间优势,单基因信号和结构张量的新算子。本文中定义的梯度能量张量(GET)基于高斯导数,使用不同的比例直到三阶。这些滤波器普遍可用,可分离并且具有最佳不确定性。可以像单基因信号一样使用此新算子的响应来估计图像的局部幅度,局部相位和局部方向,但也可以像在结构张量的情况下那样测量图像区域的相干性。 。无论在理论上还是在实验上,新方法都可以与现有方法相媲美。

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