LIFT: Learned Invariant Feature Transform
About
We introduce a novel Deep Network architecture that implements the full feature point handling pipeline, that is, detection, orientation estimation, and feature description. While previous works have successfully tackled each one of these problems individually, we show how to learn to do all three in a unified manner while preserving end-to-end differentiability. We then demonstrate that our Deep pipeline outperforms state-of-the-art methods on a number of benchmark datasets, without the need of retraining.
Kwang Moo Yi, Eduard Trulls, Vincent Lepetit, Pascal Fua• 2016
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Matching | Simulation | MS13 | 38 | |
| Image Matching | Kinect 1 | MS0.09 | 38 | |
| Image Matching | Kinect 2 | Matching Score (MS)0.16 | 38 | |
| Image Matching | DeSurT (833 pairs total) | MS Score8 | 38 | |
| Homography Estimation | Natural image dataset | RE0.35 | 20 | |
| Image Registration | Slit lamp dataset pre-processed | Failure Rate0.00e+0 | 14 | |
| Image Registration | Slit lamp dataset 206 images (Raw data) | Failed Rate0.00e+0 | 6 | |
| Image Registration | FIRE | Failure Rate0.00e+0 | 6 |
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