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Guangming Shi

Researcher at Xidian University

Publications -  488
Citations -  14046

Guangming Shi is an academic researcher from Xidian University. The author has contributed to research in topics: Computer science & Sparse approximation. The author has an hindex of 41, co-authored 428 publications receiving 10591 citations. Previous affiliations of Guangming Shi include Chinese Ministry of Education.

Papers
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Proceedings ArticleDOI

Content complexity based just noticeable difference estimation in DCT domain

TL;DR: A novel JND model in Discrete Cosine Transform (DCT) domain is proposed and experimental results demonstrate the effectiveness of the proposed model for JND estimation.
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Bayesian Correlation Filter Learning with Gaussian Scale Mixture Model for Visual Tracking

TL;DR: A principled Bayesian correlation filter learning method using Gaussian scale mixture (GSM) model that can jointly learn multipliers and CFs under a unified Bayesian estimation framework and better exploit the spatial correlations among CFs to improve the tracking performance.
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Model-based adaptive resolution upconversion of degraded images

TL;DR: Experiments show that the proposed NEARU technique outperforms current methods in both PSNR and subjective visual quality, and its advantage becomes greater for larger scaling factors.
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Hybrid sparsity learning for image restoration: An iterative and trainable approach

TL;DR: Inspired by the strategy of iterative regularization, this paper proposes to learn a hybrid sparse prior from both a collection of reference images and the given degraded image to combine complementary structured sparse priors in an iterative and trainable manner.
Proceedings ArticleDOI

A new method for signal sparse decomposition

TL;DR: This method first constructs a special concatenate dictionary with several orthogonal bases and presents a iterative group matching search algorithm that can reduce the computation burden greatly and is more efficient than MP.