Dear guest, welcome to this publication database. As an anonymous user, you will probably not have edit rights. Also, the collapse status of the topic tree will not be persistent. If you like to have these and other options enabled, you might ask Admin (Ivan Eggel) for a login account.
 [BibTeX] [RIS]
Visualizing and interpreting feature reuse of pretrained CNNs for histopathology
Type of publication: Inproceedings
Citation:
Booktitle: IMVIP 2019
Year: 2019
Location: Dublin, Ireland
Note: source code: https://git.io/JeqF3
Abstract: Reusing the parameters of networks pretrained on large scale datasets of natural images, such as ImageNet, is a common technique in the medical imaging domain. The large variability of objects and classes is, however, drastically reduced in most medical applications where images are dominated by repetitive patterns with, at times, subtle differences between the classes. This paper takes the example of finetuning a pretrained convolutional network on a histopathology task. Because of the reduced visual variability in this application domain, the network mostly learns to detect textures and simple patterns. As a result, the complex structures that maximize the channel activations of deep layers in the pretrained network are not present after finetuning. The learned features seem to be used by the network to spot atypical nuclei in the images, as shown by class activation maps. Finally, texture measures appear discriminative after finetuning, as shown by accurate Regression Concept Vectors.
Keywords: Deep Learning, feature reuse, finetuning
Authors Graziani, Mara
Andrearczyk, Vincent
Müller, Henning
Added by: []
Total mark: 0
Attachments
  • main.pdf
Notes
    Topics