kornia/tfeat
Pretrained weights for TFeat,
used by kornia.feature.TFeat.
TFeat is a 128-dimensional patch descriptor trained with a triplet loss and a shallow two-branch CNN. One of the first learning-based descriptors to outperform SIFT on standard patch benchmarks. BMVC 2016.
Original repo: vbalnt/tfeat Original license: BSD
Weights
| File | Training data |
|---|---|
tfeat-liberty.params |
Liberty |
tfeat-notredame.params |
Notre Dame |
tfeat-yosemite.params |
Yosemite |
Citation
@inproceedings{TFeat2016,
author = {Vassileios Balntas and Edgar Riba
and Daniel Ponsa and Krystian Mikolajczyk},
title = {Learning local feature descriptors with triplets
and shallow convolutional neural networks},
booktitle = {BMVC},
year = {2016}
}
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