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Thomas Wiatowski
Thomas Wiatowski
Lead Data Scientist, Dr. sc. ETH Zurich
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Year
A mathematical theory of deep convolutional neural networks for feature extraction
T Wiatowski, H Bölcskei
IEEE Transactions on Information Theory 64 (3), 1845-1866, 2017
4282017
Heart sound classification using deep structured features
M Tschannen, T Kramer, G Marti, M Heinzmann, T Wiatowski
2016 Computing in Cardiology Conference (CinC), 565-568, 2016
1062016
Deep convolutional neural networks based on semi-discrete frames
T Wiatowski, H Bölcskei
2015 IEEE International Symposium on Information Theory (ISIT), 1212-1216, 2015
372015
Energy propagation in deep convolutional neural networks
T Wiatowski, P Grohs, H Bölcskei
IEEE Transactions on Information Theory 64 (7), 4819-4842, 2017
302017
Deep convolutional neural networks on cartoon functions
P Grohs, T Wiatowski, H Bölcskei
2016 IEEE International Symposium on Information Theory (ISIT), 1163-1167, 2016
292016
Discrete deep feature extraction: A theory and new architectures
T Wiatowski, M Tschannen, A Stanic, P Grohs, H Bölcskei
International Conference on Machine Learning, 2149-2158, 2016
262016
Deep structured features for semantic segmentation
M Tschannen, L Cavigelli, F Mentzer, T Wiatowski, L Benini
2017 25th European Signal Processing Conference (EUSIPCO), 61-65, 2017
152017
Topology reduction in deep convolutional feature extraction networks
T Wiatowski, P Grohs, H Bölcskei
Wavelets and Sparsity XVII 10394, 269-280, 2017
52017
Energy decay and conservation in deep convolutional neural networks
P Grohs, T Wiatowski, H Bcolcskei
2017 IEEE International Symposium on Information Theory (ISIT), 1356-1360, 2017
42017
Harmonic Analysis of Deep Convolutional Neural Networks
T Wiatowski
ETH Zurich, 2018
2018
Supplement: Discrete Deep Feature Extraction: A Theory and New Architectures
T Wiatowski, EE ETHZ, M Tschannen, A Stanic, E CH, P Grohs, ...
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Articles 1–11