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Melanie Schellenberg

Melanie Schellenberg

Melanie Schellenberg

Position:

PhD Sudent

Affiliation:

Intelligent Medical Systems

Phone:

+49 (0) 6221 / 42-3534

Building:

REZ

Room:

F.03.038

Melanie Schellenberg studied Physics at Heidelberg University and received her B.Sc. degree in 2016 and her M.Sc. degree at the end of 2018. She is currently pursuing an interdisciplinary PhD in Computer Science at IMSY in the field of Photoacoustic Imaging (PAI). Within this field, her main research focus revolves around the enhancement of quantitative PAI through innovative learning-to-simulate approaches. Her particular area of expertise centers on data-driven anatomy generation. In addition, she has taken on the role of co-group leader within the Photoacoustics subgroup since 2021 and is eager to contribute to the improvement of good scientific practice within the division as one of the representatives. In her spare time, she enjoys sports, being creative, and spending time with friends.

Expertise

  • Data Science and Deep Learning with a focus on generative models
  • Medical Imaging with a focus on Photoacoustic Imaging
  • Scientific Visualizations
  • Good Scientific Practice


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