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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.

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Nonlocal center-surround reconstruction-based bottom-up saliency estimation

TL;DR: This work focuses more on the sparsity and uniqueness carried by the original image itself, the source of all the features, to propose a nonlocal reconstruction-based saliency model, generalized to model the global aspect saliency.
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Compressive sensing via reweighted TV and nonlocal sparsity regularisation

TL;DR: Wang et al. as mentioned in this paper proposed an iteratively reweighted TV regulariser for compressive sensing (CS) reconstruction, where spatially adaptive weights are computed towards a maximum a posteriori estimation of the image gradients.
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Robust adaptive directional lifting wavelet transform for image denoising

TL;DR: A robust adaptive directional lifting-based (RADL) wavelet transform for image denoising by constructing ADL in an anti-noise way by incorporating a simple model of pixel pattern classification into orientation estimation module to strengthen the robustness of this algorithm.
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Morphological dilation image coding with context weights prediction

TL;DR: Zhang et al. as discussed by the authors proposed an adaptive morphological dilation image coding with context weights prediction, which is not to use fixed models, but to decide whether a coefficient needs to be dilated or not according to the predicted significance degree.
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Fast Hash-Based Inter-Block Matching for Screen Content Coding

TL;DR: A hierarchical hash design and the corresponding block matching scheme to significantly reduce the complexity of hash-based block matching is proposed, which greatly reduces complexity without compromising coding efficiency.