A General Framework for Geometry-Driven Evolution Equations
作者:Wiro J. Niessen, Bart M. Ter Haar Romeny, Luc M.J. Florack, Max A. Viergever
摘要
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.
论文关键词:Image Processing, Artificial Intelligence, Evolutionary Process, Computer Vision, Image Data
论文评审过程:
论文官网地址:https://doi.org/10.1023/A:1007995731951