Yi Sheng, Labate Demetrio, Easley Glenn R, Krim Hamid
North Carolina State University, Raleigh, NC 27695, USA.
IEEE Trans Image Process. 2009 May;18(5):929-41. doi: 10.1109/TIP.2009.2013082.
It is well known that the wavelet transform provides a very effective framework for analysis of multiscale edges. In this paper, we propose a novel approach based on the shearlet transform: a multiscale directional transform with a greater ability to localize distributed discontinuities such as edges. Indeed, unlike traditional wavelets, shearlets are theoretically optimal in representing images with edges and, in particular, have the ability to fully capture directional and other geometrical features. Numerical examples demonstrate that the shearlet approach is highly effective at detecting both the location and orientation of edges, and outperforms methods based on wavelets as well as other standard methods. Furthermore, the shearlet approach is useful to design simple and effective algorithms for the detection of corners and junctions
众所周知,小波变换为多尺度边缘分析提供了一个非常有效的框架。在本文中,我们提出了一种基于剪切波变换的新方法:一种多尺度方向变换,它在定位诸如边缘等分布式不连续方面具有更强的能力。事实上,与传统小波不同,剪切波在理论上对于表示具有边缘的图像是最优的,特别是能够完全捕捉方向和其他几何特征。数值例子表明,剪切波方法在检测边缘的位置和方向方面非常有效,并且优于基于小波的方法以及其他标准方法。此外,剪切波方法对于设计用于检测角点和交叉点的简单有效算法很有用。