Deep Feature Factorization For Concept Discovery
About
We propose Deep Feature Factorization (DFF), a method capable of localizing similar semantic concepts within an image or a set of images. We use DFF to gain insight into a deep convolutional neural network's learned features, where we detect hierarchical cluster structures in feature space. This is visualized as heat maps, which highlight semantically matching regions across a set of images, revealing what the network `perceives' as similar. DFF can also be used to perform co-segmentation and co-localization, and we report state-of-the-art results on these tasks.
Edo Collins, Radhakrishna Achanta, Sabine S\"usstrunk• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Object co-segmentation | iCoseg Elephants (whole) | IoU76 | 14 | |
| Object co-segmentation | iCoseg Taj Mahal (whole) | IoU72 | 14 | |
| Landmark Detection | CelebA Wild (K=8) (test) | Normalized L2 Distance (%)31.3 | 14 | |
| Co-localization | VOC 2007 | Aero Acc64 | 13 | |
| Object co-segmentation | iCoseg Gymnastics (whole) | IoU52 | 12 | |
| Landmark Detection | CUB Category 002 2011 (test) | Normalized L2 Distance21.6 | 12 | |
| Landmark Detection | CUB Category 001 2011 (test) | Normalized L2 Distance22.4 | 12 | |
| Cosegmentation | iCoseg | -- | 12 | |
| Part co-segmentation | iCoseg Pyramids (whole) | mIoU56 | 9 | |
| Part co-segmentation | iCoseg Statue of Liberty (whole) | IoU0.44 | 9 |
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