Building Blocks for Computer Vision with Stochastic Partial Differential Equations
作者:Tobias Preusser, Hanno Scharr, Kai Krajsek, Robert M. Kirby
摘要
We discuss the basic concepts of computer vision with stochastic partial differential equations (SPDEs). In typical approaches based on partial differential equations (PDEs), the end result in the best case is usually one value per pixel, the “expected” value. Error estimates or even full probability density functions PDFs are usually not available. This paper provides a framework allowing one to derive such PDFs, rendering computer vision approaches into measurements fulfilling scientific standards due to full error propagation. We identify the image data with random fields in order to model images and image sequences which carry uncertainty in their gray values, e.g. due to noise in the acquisition process.
论文关键词:Image processing, Error propagation, Random fields, Polynomial chaos, Stochastic partial differential equations, Stochastic Galerkin method, Stochastic finite element method
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论文官网地址:https://doi.org/10.1007/s11263-008-0145-5