david-svitov / margindistillation
MarginDistillation: distillation for margin-based softmax
☆43Updated 4 years ago
Related projects ⓘ
Alternatives and complementary repositories for margindistillation
- An implementation of Support Vector Guided Softmax Loss for Face Recognition☆22Updated 5 years ago
- Improving Face Recognition from Hard Samplesvia Distribution Distillation Loss☆46Updated 3 years ago
- ☆35Updated 3 years ago
- Loss Function Search for Face Recognition☆40Updated 3 years ago
- ☆35Updated 2 years ago
- ☆37Updated 4 years ago
- ☆23Updated 3 years ago
- "Semi-Siamese Training for Shallow Face Learning"☆39Updated 3 years ago
- Explainable Face Recognition ECCV 2020 Paper code and dataset repository☆61Updated 3 years ago
- our code☆33Updated 3 years ago
- https://arxiv.org/abs/2005.10497☆73Updated 4 years ago
- Code for CVPR2019 paper《Unequal Training for Deep Face Recognition with Long Tailed Noisy Data》☆67Updated 5 years ago
- Implementation of knapsack pruning☆28Updated 4 years ago
- Spherical Confidence Learning for Face Recognition, accepted to CVPR2021 (Oral).☆78Updated 3 years ago
- Implementation for <Neural Similarity Learning> in NeurIPS'19.☆33Updated 4 years ago
- pytorch CircleLoss for Face recognition☆26Updated 4 years ago
- ☆35Updated 6 years ago
- ☆24Updated last year
- Learning Compatible Embeddings, ICCV 2021☆30Updated 3 years ago
- convenience utilities for model validation☆23Updated 5 years ago
- Implement SphereFace in Pytorch☆36Updated 5 years ago
- [NeurIPS 2020] Code for the paper "Balanced Meta-Softmax for Long-Tailed Visual Recognition"☆74Updated 4 years ago
- tools for MegaFace evaluation, e.g. plotting evalaution results☆21Updated 6 years ago
- Single Path One-Shot NAS MXNet implementation with Supernet training and searching☆19Updated 4 years ago
- Learning Metrics from Teachers: Compact Networks for Image Embedding (CVPR19)☆76Updated 5 years ago
- ☆185Updated 3 years ago
- Self-distillation with Batch Knowledge Ensembling Improves ImageNet Classification☆81Updated 3 years ago
- IJCV22 Attack your retrieval model via Query! They are not robust as you expected!☆47Updated last year