International audienceThis presentation addresses the problem of reconstructing a high-resolution image from multiple lower-resolution snapshots captured from slightly different viewpoints in space and time. Key challenges for solving this super-resolution problem include (i) aligning the input pictures with sub-pixel accuracy, (ii) handling raw (noisy) images for maximal faithfulness to native camera data, and (iii) designing/learning an image prior (regularizer) well suited to the task. We address these three challenges with a hybrid algorithm building on the insight from Wronski et al. that aliasing is an ally in this setting, with parameters that can be learned end to end, while retaining the interpretability of classical approaches to ...
Super-resolution (SR) reconstruction is a filtering technique that aims to combine a sequence of und...
Most learning-based super-resolution (SR) methods aim to recover high-resolution (HR) image from a g...
High-resolution images are a fundamental requirement of modern imaging applications. However, sensor...
International audienceThis presentation addresses the problem of reconstructing a high-resolution im...
International audiencePhotographs captured by smartphones and mid-range cameras have limited spatial...
High-resolution is generally required and preferred for producing more detailed information inside t...
In super-resolution (SR) reconstruction of images, regularization becomes crucial when insufficient ...
A variety of super-resolution algorithms have been described in this book. Most of them are based on...
International audienceNowadays, smartphone cameras capture bursts of raw photographs whenever the tr...
In this paper we study the usefulness of different local and global, learning-based, single-frame im...
Over the past decade, single image Super-Resolution (SR) research has focused on developing sophisti...
This thesis concerns the use of spatial and tonal adaptivity in improving the resolution of aliased ...
We present a new algorithm that performs demosaicing and super-resolution jointly from a set of raw ...
In this paper, we present a super-resolution method to approximately double image resolution in both...
In this paper, we present a simple method to almost quadruple the spatial resolution of aliased imag...
Super-resolution (SR) reconstruction is a filtering technique that aims to combine a sequence of und...
Most learning-based super-resolution (SR) methods aim to recover high-resolution (HR) image from a g...
High-resolution images are a fundamental requirement of modern imaging applications. However, sensor...
International audienceThis presentation addresses the problem of reconstructing a high-resolution im...
International audiencePhotographs captured by smartphones and mid-range cameras have limited spatial...
High-resolution is generally required and preferred for producing more detailed information inside t...
In super-resolution (SR) reconstruction of images, regularization becomes crucial when insufficient ...
A variety of super-resolution algorithms have been described in this book. Most of them are based on...
International audienceNowadays, smartphone cameras capture bursts of raw photographs whenever the tr...
In this paper we study the usefulness of different local and global, learning-based, single-frame im...
Over the past decade, single image Super-Resolution (SR) research has focused on developing sophisti...
This thesis concerns the use of spatial and tonal adaptivity in improving the resolution of aliased ...
We present a new algorithm that performs demosaicing and super-resolution jointly from a set of raw ...
In this paper, we present a super-resolution method to approximately double image resolution in both...
In this paper, we present a simple method to almost quadruple the spatial resolution of aliased imag...
Super-resolution (SR) reconstruction is a filtering technique that aims to combine a sequence of und...
Most learning-based super-resolution (SR) methods aim to recover high-resolution (HR) image from a g...
High-resolution images are a fundamental requirement of modern imaging applications. However, sensor...