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license: other
task_categories:
- image-classification
- zero-shot-image-classification
tags:
- face-recognition
- face-verification
- face-identification
- ijb-a
- janus
- template-based
pretty_name: IJB-A HF-ready
size_categories:
- 10K<n<100K
---
# IJB-A HF-ready
This repo packages the IARPA Janus Benchmark-A (IJB-A) face recognition dataset
in its CleanData layout, plus the official 10-split 1:1 verification and 1:N
identification protocols.
Unlike LFW-style benchmarks, IJB-A is **template-based**: each subject is
represented by a *template* aggregating multiple still images and/or video
frames. Protocol CSVs map every (template, file) row to a face annotation with
bounding box, landmarks, and demographic attributes.
## Layout
```
ijba/
├── README.md
├── files.csv
├── img/ # 5396 still images (flat)
├── frame.tar # 20369 video frames packed into a single tar (~817 MB)
├── img.txt # upstream bbox annotations subset (still images)
├── frame.txt # upstream bbox annotations subset (video frames)
└── protocols/
├── IJB-A_11_sets/split{1..10}/ # 1:1 verification protocol inputs
│ ├── train_<n>.csv
│ ├── verify_metadata_<n>.csv
│ └── verify_comparisons_<n>.csv
├── IJB-A_11_output/split{1..10}/ # baseline 1:1 outputs (.matches)
├── IJB-A_1N_sets/split{1..10}/ # 1:N identification protocol inputs
│ ├── train_<n>.csv
│ ├── search_gallery_<n>.csv
│ └── search_probe_<n>.csv
└── IJB-A_1N_output/split{1..10}/ # baseline 1:N outputs (.candidate_lists)
```
## Protocol CSV columns
`train_*.csv`, `verify_metadata_*.csv`, `search_gallery_*.csv`, `search_probe_*.csv`
all share the same schema:
`TEMPLATE_ID, SUBJECT_ID, FILE, MEDIA_ID, SIGHTING_ID, FRAME, FACE_X, FACE_Y,
FACE_WIDTH, FACE_HEIGHT, RIGHT_EYE_X, RIGHT_EYE_Y, LEFT_EYE_X, LEFT_EYE_Y,
NOSE_BASE_X, NOSE_BASE_Y, FACE_YAW, FOREHEAD_VISIBLE, EYES_VISIBLE,
NOSE_MOUTH_VISIBLE, INDOOR, GENDER, SKIN_TONE, AGE, FACIAL_HAIR`
The `FILE` column resolves relative to the dataset root, e.g. `img/8565.jpg` or
`frame/28065_00000.png`.
`verify_comparisons_*.csv` is a header-less file with two columns:
`enroll_template_id, verify_template_id`.
`*.matches` (verification baseline) and `*.candidate_lists` (identification
baseline) preserve the upstream output schema — see the IJB-A documentation for
details.
## files.csv
A flat index of every image with columns `file_name, kind, extension, size_bytes,
referenced_in_protocols`. Use it for quick joins or coverage checks without
walking the filesystem.
## Local Stats
- Still images (`img/`): 5396
- Video frames (`frame/`): 20369
- Total images: 25765
- Distinct files referenced by protocols: 25791
- Verification splits: 10 (`IJB-A_11_sets/split1..split10`, 30 CSVs total)
- Verification baseline outputs: 10 (`IJB-A_11_output/`, 10 files total)
- Identification splits: 10 (`IJB-A_1N_sets/split1..split10`, 30 CSVs total)
- Identification baseline outputs: 10 (`IJB-A_1N_output/`, 10 files total)
## Missing protocol references
The upstream CleanData drop is missing 26 frames that are
referenced by at least one protocol CSV. Filter rows on these `FILE` values
before loading them, or skip silently:
- `frame/28264_00000.png`
- `frame/28296_00337.png`
- `frame/28296_00397.png`
- `frame/28296_00448.png`
- `frame/28296_00508.png`
- `frame/28296_00928.png`
- `frame/28296_00983.png`
- `frame/28296_01011.png`
- `frame/28296_01079.png`
- `frame/28296_01375.png`
- `frame/28296_01380.png`
- `frame/28296_01440.png`
- `frame/28296_01500.png`
- `frame/28296_01560.png`
- `frame/28317_01035.png`
- `frame/28332_01020.png`
- `frame/28496_00000.png`
- `frame/28552_00660.png`
- `frame/28593_00000.png`
- `frame/28789_00000.png`
- `frame/28928_00000.png`
- `frame/29192_00000.png`
- `frame/29387_00125.png`
- `frame/29563_00000.png`
- `frame/30369_00000.png`
- `frame/30387_00060.png`
## Unpacking video frames
Video frames are shipped as a single `frame.tar` archive (uploading 20k tiny
PNGs to the Hub triggered server-side commit failures). After downloading the
repo, extract it once so the protocol `FILE` paths resolve:
```bash
tar xf frame.tar # creates frame/<video_id>_<frame_offset>.png
```
## Loading
```python
import pandas as pd
import tarfile
from huggingface_hub import snapshot_download
from pathlib import Path
from PIL import Image
root = Path(snapshot_download(repo_id="marcelohaps/ijb-a", repo_type="dataset"))
# Extract frame.tar in place if not already extracted
if not (root / "frame").exists():
with tarfile.open(root / "frame.tar") as tf:
tf.extractall(root)
# 1:1 verification, split 1
metadata = pd.read_csv(root / "protocols/IJB-A_11_sets/split1/verify_metadata_1.csv")
comparisons = pd.read_csv(
root / "protocols/IJB-A_11_sets/split1/verify_comparisons_1.csv",
header=None, names=["enroll_template_id", "verify_template_id"],
)
# Open the first face referenced by template_id 109
row = metadata[metadata["TEMPLATE_ID"] == 109].iloc[0]
image = Image.open(root / row["FILE"])
```
## Notes
IJB-A is distributed under the IARPA Janus benchmark license. Check the original
dataset terms before publishing or redistributing it. This package preserves the
upstream filenames (case included), bounding boxes, and protocol files verbatim.
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