首页> 外文会议>International Workshop on Deep Structure, Singularities, and Computer Vision >Linear Image Reconstruction from a Sparse Set of α-Scale Space Features by Means of Inner Products of Sobolev Type
【24h】

Linear Image Reconstruction from a Sparse Set of α-Scale Space Features by Means of Inner Products of Sobolev Type

机译:通过SoboLev类型的内部产品,从稀疏的α尺度空间特征中的线性图像重建

获取原文

摘要

Inner products of Sobolev type are extremely useful for image reconstruction of images from a sparse set of α-scale space features. The common (non)-linear reconstruction frameworks, follow an Euler Lagrange minimization. If the Lagrangian (prior) is a norm induced by an inner product of a Hilbert space, this Euler Lagrange minimization boils down to a simple orthogonal projection within the corresponding Hilbert space. This basic observation has been overlooked in image analysis for the cases where the Lagrangian equals a norm of Sobolev type, resulting in iterative (non-linear) numerical methods, where already an exact solution with non-iterative linear algorithm is at hand. Therefore we provide a general theory on linear image reconstructions and metameric classes of images. By applying this theory we obtain visually more attractive reconstructions than the previously proposed linear methods and we find connected curves in the metameric class of images, determined by a fixed set of linear features, with a monotonic increase of smoothness. Although the theory can be applied to any linear feature reconstruction or principle component analysis, we mainly focus on reconstructions from so-called topological features (such as top-points and grey-value flux) in scale space, obtained from geometrical observations in the deep structure of a scale space.
机译:Sobolev型内积是用于将图像的图像重建从稀疏集合的α-尺度空间特征是非常有用的。公共(非) - 线性重建框架,按照欧拉拉格朗日最小化。如果拉格朗日(现有)是由Hilbert空间的内积诱导的一种规范,这欧拉拉格朗日最小化归结为相应的希尔伯特空间内的简单的正交投影。这个基本观察已经在对于其中拉格朗日等于Sobolev型的范数的情况下,图像分析忽略,导致迭代(非线性)的数值方法,其中已与非迭代线性算法的精确解决方案是在眼前。因此,我们提供线性图像重建和同色异谱类图像的一般理论。通过应用该原理,我们获得比以前提出的线性方法在视觉上更吸引人的重建,我们发现在同质异性类图像的连接曲线,由一组固定的线性特性决定,与平滑的单调增加。虽然理论可以应用于任何线性特征重构或主成分分析,我们主要集中在从所谓的拓扑特征重建(如顶点和灰度值通量)在尺度空间,从在深几何观测提取构造一个尺度空间的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号