A new fast super-resolution reconstruction method based on non-local means

Author(s):  
Yun Zhang ◽  
Junping Du ◽  
Liang Xu ◽  
Xiaoru Wang ◽  
Qingping Li
Tomography ◽  
2022 ◽  
Vol 8 (1) ◽  
pp. 158-174
Author(s):  
Xue Ren ◽  
Ji Eun Jung ◽  
Wen Zhu ◽  
Soo-Jin Lee

In this paper, we present a new regularized image reconstruction method for positron emission tomography (PET), where an adaptive weighted median regularizer is used in the context of a penalized-likelihood framework. The motivation of our work is to overcome the limitation of the conventional median regularizer, which has proven useful for tomographic reconstruction but suffers from the negative effect of removing fine details in the underlying image when the edges occupy less than half of the window elements. The crux of our method is inspired by the well-known non-local means denoising approach, which exploits the measure of similarity between the image patches for weighted smoothing. However, our method is different from the non-local means denoising approach in that the similarity measure between the patches is used for the median weights rather than for the smoothing weights. As the median weights, in this case, are spatially variant, they provide adaptive median regularization achieving high-quality reconstructions. The experimental results indicate that our similarity-driven median regularization method not only improves the reconstruction accuracy, but also has great potential for super-resolution reconstruction for PET.


Author(s):  
Tien Ho-Phuoc ◽  
Dung-Nghi Truong Cong

This paper shows an effective method for video upscaling or super resolution (SR) without using an explicit motion estimation step. Exploiting the Non-Local Means (NLM) algorithm in order to bypass motion estimation, which is often complicated, our method proposes some modifications to ensure a good compromise between noise cancelling and detail preservation. A detailed consideration of the NLM algorithm is carried out to propose an efficient distance computation and the best eighbors for the reconstruction of each SR pixel. Moreover, efficient segmentation algorithms are also considered to build a novel upscaling framework that is adapted to spatial contrast. The satisfying results with real videos illustrated the advantages of upscaling without motion estimation compared to motion estimation-based upscaling, as well as the role of segmentation in video super resolution.


2011 ◽  
Vol 255-260 ◽  
pp. 2145-2149
Author(s):  
Lin Guo ◽  
Li Zhen Lian

A GST-driven spatially adaptive filter is developed in this paper based on the framework of non-local means (NLM) avoiding explicit motion estimation. Gradient Structure Tensor (GST) is introduced to express the underlying local image structural patterns, which drives the window function to yield adaptive scale and shape fitting for the local structure. This leads to patches with more similar gray-level and local structures being gathered for super-resolution estimation of image. Results on several test video sequences show that the proposed method is effective in providing super-resolution on general sequences and achieves improvement of performance on the compared method.


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