Current deep learning-based solutions for image analysis tasks are commo...
Autoencoders are able to learn useful data representations in an unsuper...
Light field applications, especially light field rendering and depth
est...
Deep neural networks are commonly used for medical purposes such as imag...
The characterization of an exoplanet's interior is an inverse problem, w...
We introduce a new architecture called a conditional invertible neural
n...
Recent work demonstrated that flow-based invertible neural networks are
...
Image registration is the basis for many applications in the fields of
m...
Multispectral photoacoustic imaging (PAI) is an emerging imaging modalit...
Standard supervised learning breaks down under data distribution shift.
...
With the maturing of deep learning systems, trustworthiness is becoming
...
Estimating the parameters of mathematical models is a common problem in
...
The Information Bottleneck (IB) principle offers a unified approach to m...
Multispectral optical imaging is becoming a key tool in the operating ro...
In this work, we address the task of natural image generation guided by ...
In this paper, we introduce Hierarchical Invertible Neural Transport (HI...
Purpose: Optical imaging is evolving as a key technique for advanced sen...
In many tasks, in particular in natural science, the goal is to determin...