Authors
Nicola Pezzotti, Thomas Höllt, Jan Van Gemert, Boudewijn PF Lelieveldt, Elmar Eisemann, Anna Vilanova
Publication date
2018/1
Journal
IEEE transactions on visualization and computer graphics
Volume
24
Issue
1
Pages
98-108
Publisher
IEEE
Description
Deep neural networks are now rivaling human accuracy in several pattern recognition problems. Compared to traditional classifiers, where features are handcrafted, neural networks learn increasingly complex features directly from the data. Instead of handcrafting the features, it is now the network architecture that is manually engineered. The network architecture parameters such as the number of layers or the number of filters per layer and their interconnections are essential for good performance. Even though basic design guidelines exist, designing a neural network is an iterative trial-and-error process that takes days or even weeks to perform due to the large datasets used for training. In this paper, we present DeepEyes, a Progressive Visual Analytics system that supports the design of neural networks during training. We present novel visualizations, supporting the identification of layers that learned a stable set …
Total citations
2017201820192020202120222023202423338463531257
Scholar articles
N Pezzotti, T Höllt, J Van Gemert, BPF Lelieveldt… - IEEE transactions on visualization and computer …, 2017