@article{2018arXiv180801694G,
author = {N. Gessert and T. Sentker and F. Madesta and R. Schmitz and H. Kniep and I. Baltruschat and R. Werner and A. Schlaefer},
title = {Skin Lesion Diagnosis using Ensembles, Unscaled Multi-Crop Evaluation and Loss Weighting.},
journal = {ArXiv e-prints.},
year = {2018},
pages = {Oral. Best challenge submission with public data only. Overall 2nd placed team},
month = {May},
booktitle = {International Conference on Medical Imaging with Deep Learning},
url = {https://arxiv.org/abs/1808.01694},
keywords = {Computer Science - Computer Vision and Pattern Recognition},
abstract = {Deep learning methods have shown impressive results for a variety of medical problems over the last few years. However, datasets tend to be small due to time\-consuming annotation. As datasets with different patients are often very heterogeneous generalization to new patients can be difficult. This is complicated further if large differences in image acquisition can occur, which is common during intravascular optical coherence tomography for coronary plaque imaging. We address this problem with an adversarial training strategy where we force a part of a deep neural network to learn features that are independent of patient\- or acquisition\-specific characteristics. We compare our regularization method to typical data augmentation strategies and show that our approach improves performance for a small medical dataset}
}

@COMMENT{Bibtex file generated on 2026-6-24 with typo3 si_bibtex plugin. Data from https://www.tuhh.de/mtec/publications/2019-2013 }