# Process of image super-resolution

**Authors:** Sebastien Lablanche, Gerard Lablanche

arXiv: 1904.08396 · 2022-12-07

## TL;DR

This paper presents a fast, resource-efficient super-resolution method capable of reconstructing clear human faces from degraded images without deep learning, making it accessible and cost-effective.

## Contribution

It introduces a novel super-resolution algorithm that is faster and simpler than existing methods, avoiding the need for large training datasets or deep neural networks.

## Key findings

- Able to reconstruct coherent faces from highly pixelated images
- Operates faster than compressed sensing algorithms
- Does not require deep learning or extensive training data

## Abstract

In this paper we explain a process of super-resolution reconstruction allowing to increase the resolution of an image.The need for high-resolution digital images exists in diverse domains, for example the medical and spatial domains. The obtaining of high-resolution digital images can be made at the time of the shooting, but it is often synonymic of important costs because of the necessary material to avoid such costs, it is known how to use methods of super-resolution reconstruction, consisting from one or several low resolution images to obtain a high-resolution image. The american patent US 9208537 describes such an algorithm. A zone of one low-resolution image is isolated and categorized according to the information contained in pixels forming the borders of the zone. The category of it zone determines the type of interpolation used to add pixels in aforementioned zone, to increase the neatness of the images. It is also known how to reconstruct a low-resolution image there high-resolution image by using a model of super-resolution reconstruction whose learning is based on networks of neurons and on image or a picture library. The demand of chinese patent CN 107563965 and the scientist publication "Pixel Recursive Super Resolution", R. Dahl, M. Norouzi, J. Shlens propose such methods. The aim of this paper is to demonstrate that it is possible to reconstruct coherent human faces from very degraded pixelated images with a very fast algorithm, more faster than compressed sensing (CS), easier to compute and without deep learning, so without important technology resources, i.e. a large database of thousands training images (see arXiv:2003.13063).   This technological breakthrough has been patented in 2018 with the demand of French patent FR 1855485 (https://patents.google.com/patent/FR3082980A1, see the HAL reference https://hal.archives-ouvertes.fr/hal-01875898v1).

## Full text

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## Figures

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## References

11 references — full list in the complete paper: https://tomesphere.com/paper/1904.08396/full.md

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