Prof. Dr.-Ing. Andreas Maier

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Types of publications

Journal article
Book chapter / Article in edited volumes
Authored book
Translation
Thesis
Edited Volume
Conference contribution
Other publication type
Unpublished / Preprint

Publication year

From
To

Abstract

Journal

Image-based Detection of MRI Hardware Failures (2019) Jain B, Kuhnert N, deOliveira A, Maier A Conference contribution, Conference Contribution Flexible Log File Parsing Using Hidden Markov Models (2019) Kuhnert N, Maier A Conference contribution, Conference Contribution Deriving Neural Network Architectures Using Precision Learning: Parallel-to-Fan Beam Conversion (2019) Syben-Leisner C, Stimpel B, Lommen J, Würfl T, Dörfler A, Maier A Conference contribution, Original article Deep Learning for Orca Call Type Identification – A Fully Unsupervised Approach (2019) Bergler C, Schmitt M, Cheng RX, Maier A, Barth V, Nöth E Conference contribution, Original article IJCARS: BVM 2019 special issue (2019) Maier A, Deserno TM, Handels H, Maier-Hein K, Palm C, Tolxdorff T Journal article Analysis by adversarial synthesis - A novel approach for speech vocoding (2019) Mustafa A, Biswas A, Bergler C, Schottenhamml J, Maier A Conference contribution U-Net for SPECT Image Denoising (2019) Reymann M, Würfl T, Stimpel B, Ritt P, Cachovan M, Vija AH, Maier A Conference contribution, Abstract of a poster Corrigendum to: Intraoperative imaging modalities and compensation for brain shift in tumor resection surgery (International Journal of Biomedical Imaging (2017) 2017 (6028645) DOI: 10.1155/2017/6028645) (2019) Bayer S, Maier A, Ostermeier M, Fahrig R Journal article, Erratum Simultaneous reconstruction of multiple stiff wires from a single X-ray projection for endovascular aortic repair (2019) Breininger K, Hanika M, Weule M, Kowarschik M, Pfister M, Maier A Journal article Deep Representation Learning for Orca Call Type Classification (2019) Bergler C, Schmitt M, Cheng RX, Schröter H, Maier A, Barth V, Weber M, Nöth E Conference contribution