Glint360K face recognition dataset

folder glint360k (7 files)
fileglint360k_05 20.40GB
fileglint360k_06 6.18GB
fileglint360k_03 20.40GB
fileglint360k_04 20.40GB
fileglint360k_01 20.40GB
fileglint360k_02 20.40GB
fileglint360k_00 20.40GB
Type: Dataset
Tags:

Bibtex:
@article{,
title= {Glint360K face recognition dataset},
journal= {},
author= {},
year= {},
url= {https://github.com/deepinsight/insightface/tree/master/recognition/partial_fc},
abstract= {Glint360K contains **`17091657`** images of **`360232`** individuals. 
By employing the Patial FC training strategy, baseline models trained on Glint360K can easily achieve state-of-the-art performance. 
Detailed evaluation results on the large-scale test set (e.g. IFRT, IJB-C and Megaface) are as follows:

# 1. Evaluation on IFRT       
**`r`** denotes the sampling rate of negative class centers.

| Backbone     | Dataset            | African | Caucasian | Indian | Asian | ALL   |
| ------------ | -----------        | ----- | ----- | ------ | ----- | ----- |
| R50          | MS1M-V3            | 76.24 | 86.21 | 84.44  | 37.43 | 71.02 |
| R124         | MS1M-V3            | 81.08 | 89.06 | 87.53  | 38.40 | 74.76 |
| R100         | **Glint360k**(r=1.0)   | 89.50 | 94.23 | 93.54  | **65.07** | **88.67** |
| R100         | **Glint360k**(r=0.1)   | **90.45** | **94.60** | **93.96**  | 63.91 | 88.23 |

### 2. Evaluation on IJB-C and Megaface  
We employ ResNet100 as the backbone and CosFace (m=0.4) as the loss function.
TAR@FAR=1e-4 is reported on the IJB-C datasets, and TAR@FAR=1e-6 is reported on the Megaface dataset.

|Test Dataset        | IJB-C     | Megaface_Id  | Megaface_Ver |
| :---               | :---:     | :---:        | :---:        |
| MS1MV2             | 96.4      | 98.3         | 98.6         |
|**Glint360k** | **97.3**  | **99.1**     | **99.1**     |

# 3. License 

The Glint360K dataset (and the models trained with this dataset) are available for non-commercial research purposes only.

Refer to the following command to unzip.
```
cat glint360k_* | tar -xzvf -

# Don't forget the last '-'!

# cf7433cbb915ac422230ba33176f4625  glint360k_00
# 589a5ea3ab59f283d2b5dd3242bc027a  glint360k_01
# 8d54fdd5b1e4cd55e1b9a714d76d1075  glint360k_02
# cd7f008579dbed9c5af4d1275915d95e  glint360k_03
# 64666b324911b47334cc824f5f836d4c  glint360k_04
# a318e4d32493dd5be6b94dd48f9943ac  glint360k_05
# c3ae1dcbecea360d2ec2a43a7b6f1d94  glint360k_06
# md5sum:
# 5d9cd9f262ec87a5ca2eac5e703f7cdf train.idx
# 8483be5af6f9906e19f85dee49132f8e train.rec
```
Use unpack_glint360k.py to unpack.


## Citation
If you find Partial-FC or Glint360K useful in your research, please consider to cite the following related paper: 

[Partial FC](https://arxiv.org/abs/2203.15565)
```
@inproceedings{an2022pfc,
  title={Killing Two Birds with One Stone: Efficient and Robust Training of Face Recognition CNNs by Partial FC},
  author={An, Xiang and Deng, Jiangkang and Guo, Jia and Feng, Ziyong and Zhu, Xuhan and Jing, Yang and Tongliang, Liu},
  booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
  year={2022}
}

```
},
keywords= {},
terms= {},
license= {},
superseded= {}
}

Hosted by users

Send Feedback Start
   0.000005
DB Connect
   0.000320
Lookup hash in DB
   0.000336
Get torrent details
   0.000113
Get torrent details, finished
   0.000195
Get authors
   0.000001
Select authors
   0.000157
Parse bibtex
   0.000192
Write header
   0.000177
get stars
   0.000098
home tab
   0.000227
render right panel
   0.000006
render ads
   0.000329
fetch current hosters
   0.000239
related datasets
   0.003552
Done