报告人:
庞志峰 【河南大学】
报告人单位:
时间:
2018-10-27 11:00-12:00
地点:
卫津路校区6号楼112教室
开始时间:
2018-10-27 11:00-12:00
报告人简介:
年:
日月:
报告人简介
Henan University(河南大学)副教授
报告内容介绍
To keep local structures when denoising the degraded image, we propose a new anisotropic total variation restored model based on the combination of the gradient operator $\nabla$ and the adaptive weighted matrix $\textbf{T}$ into the $\ell^1$-norm regularized term. The weighted matrix depends on the edge indicator function along the $x$ and $y$-axis direction differences, so this matrix can rotate direction of the gradient operator tending to bigger weight and therefore can describe the local features in image. In order to cope with the nonsmoothing of the proposed model, we employ the alternating direction method of multipliers method (ADMM) to solve it. Relying on the convexity, the convergence of the proposed numerical algorithm is provided as well. Denoising experiments on the artificial images and benchmark images show the effectiveness of the proposed model by comparing it to other well-known gradient-based methods in terms of restoration quality. As some extensions, we also consider to other image processing problems such image segmentation and the restoration to the impulse noise.