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基于张量扩散的小波域修复模型(英文) 被引量:1

Wavelet Inpainting Based on Tensor Diffusion
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摘要 Due to the lossy transmission in the JPEG2000 image compression standard,the loss of wavelet coefficients heavily af-fects the quality of the received image.In this paper,we propose a novel wavelet inpainting model based on tensor diffusion(TDWI)to restore the missing or damaged wavelet coefficients.A hybrid model is built by combining structure-adaptive anisotropic regu-larization with wavelet representation.Its associated Euler-Lagrange equation is also given for analyzing its regularity performance.Owing to the matrix representation of the structure tensor in the regularization term,the shape of diffusion kernel changes adaptivelyaccording to the image features,including sharp edges,corners and homogeneous regions.Compared with existing wavelet inpaint-ing models,the proposed one can control more adaptively and accurately the geometric regularity in the image and exhibits betterrobustness to noise.In addition,an effective and proper numerical scheme is adopted to improve the computation.Experimentalresults on a variety of loss scenarios are given to demonstrate the advantages of our proposed model. Due to the lossy transmission in the JPEG2000 image compression standard,the loss of wavelet coefficients heavily affects the quality of the received image.In this paper,we propose a novel wavelet inpainting model based on tensor diffusion(TDWI)to restore the missing or damaged wavelet coefficients.A hybrid model is built by combining structure-adaptive anisotropic regu-larization with wavelet representation.Its associated Euler-Lagrange equation is also given for analyzing its regularity performance.Owing to the matrix representation of the structure tensor in the regularization term,the shape of diffusion kernel changes adaptivelyaccording to the image features,including sharp edges,corners and homogeneous regions.Compared with existing wavelet inpainting models,the proposed one can control more adaptively and accurately the geometric regularity in the image and exhibits betterrobustness to noise.In addition,an effective and proper numerical scheme is adopted to improve the computation.Experimentalresults on a variety of loss scenarios are given to demonstrate the advantages of our proposed model.
机构地区 ICIE Institute
出处 《自动化学报》 EI CSCD 北大核心 2013年第7期1071-1079,共9页 Acta Automatica Sinica
基金 Supported by National Natural Science Foundation of China(61003196,61105066) the Fundamental Research Funds for the Central Universities(K50510040007)
关键词 小波系数 扩散张量 修复 图像压缩标准 JPEG2000 应用 拉格朗日方程 自适应结构 Wavelet inpainting structure tensor diffusion anisotropic regularization
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