HaLO / README.md
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---
dataset_info:
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configs:
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data_files:
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path: absolute/test-*
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path: absolute/validation-*
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path: pre_study/annotator12-*
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path: pre_study/annotator2-*
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path: pre_study/annotator3-*
license: mit
language:
- de
tags:
- handwriting
- legibility
- pairwise-comparison
- ranking
- vision
size_categories:
- 10K<n<100K
task_categories:
- text-classification
---
# HaLO: Handwriting Assessment for Legibility and Ordering
HaLO is a dataset of 1,907 handwriting images from 202 German schoolchildren (ages 10--12), annotated with 19,070 pairwise legibility judgments. It supports research on AI-based handwriting legibility assessment through comparative ranking.
## Dataset Description
Each handwriting sample depicts one of ten predefined German sentences (20--27 characters each), written by a child in their natural handwriting style. The samples were scanned and cropped from paper sheets. Due to privacy constraints, only Pixtral 12B image embeddings (1024-dimensional feature vectors) are released, not the raw images.
### Annotation
Legibility annotations were collected using a pairwise comparison paradigm: annotators were shown two handwriting samples side by side and asked to select the more legible one. A pre-study compared this approach with absolute Likert-scale ratings and found that pairwise comparisons produce higher inter- and intra-rater agreement. The main study annotations were collected by eight annotators (three experts, five non-experts).
### Data Splits
The dataset is split into training (1,134 samples, 121 children), validation (382 samples, 40 children), and test (391 samples, 41 children) partitions. All samples from the same child are assigned to the same partition to prevent information leakage.
## Configurations
### `default` / `main_study`
Pairwise legibility annotations from the main study. Each row is a comparison between two samples.
| Field | Description |
|-------|-------------|
| `sampleId1`, `sampleId2` | IDs of the two compared samples |
| `score` | `1` if sample 1 is more legible, `-1` if sample 2 is more legible |
| `samplePath1`, `samplePath2` | Paths to the corresponding feature `.npy` files |
| `userId` | Annotator ID |
| `referenceSentenceId1`, `referenceSentenceId2` | Reference sentence IDs (1--10) |
| `questionId` | Annotation question ID |
| `submissionTimestamp` | Timestamp of the annotation |
**Splits:** `train` (11,340), `test` (3,910), `validation` (3,820)
```python
from datasets import load_dataset
dataset = load_dataset("MarcoLents/HaLO")
```
### `pre_study`
Pairwise legibility annotations from the annotation pre-study, with the same schema as the main study. Splits correspond to individual annotators, where Annotator 1 performed the procedure twice (splits `annotator11` and `annotator12`).
**Splits:** `annotator11` (1,839), `annotator12` (1,530), `annotator2` (1,606), `annotator3` (1,541)
```python
pre_study = load_dataset("MarcoLents/HaLO", "pre_study")
```
### `characteristics`
Binary sample characteristics annotated per sample.
| Field | Description |
|-------|-------------|
| `sampleId` | Sample ID |
| `text` | Transcribed text content |
| `referenceSentenceId` | Reference sentence ID |
| `isWrittenInPureCursive` | Whether the sample is written entirely in cursive |
| `isStrokeThin` | Whether the stroke width is predominantly thin |
| `containsTypo` | Whether at least one typographical error is present |
| `containsCorrection` | Whether at least one correction is present |
| `samplePath` | Path to the feature `.npy` file |
**Splits:** `train` (1,134), `test` (391), `validation` (382)
```python
characteristics = load_dataset("MarcoLents/HaLO", "characteristics")
```
### `absolute_pre_study`
Absolute legibility ratings on a 5-point Likert scale (0 = very legible, 4 = not legible at all) from the annotation pre-study. Four annotators independently rated a random subset of 136 samples. Annotator 4 rated twice (`annotator41`, `annotator42`).
| Field | Description |
|-------|-------------|
| `sampleId` | Sample ID |
| `referenceSentenceId` | Reference sentence ID |
| `annotator41` -- `annotator7` | Integer Likert ratings (0--4) per annotator |
| `samplePath` | Path to the feature `.npy` file |
**Splits:** `train` (136)
```python
absolute_pre_study = load_dataset("MarcoLents/HaLO", "absolute_pre_study")
```
### `absolute_test`
Absolute legibility ratings on a 5-point Likert scale (0 = very legible, 4 = not legible at all) from the test set. Four annotators independently rated samples from the test partition. Not all annotators rated every sample; missing values indicate unrated samples. Where a rater provided multiple ratings for the same sample, the value is the rounded mean.
> **Note:** The `absolute_pre_study` and `absolute_test` configs use different annotator numbering schemes because they originate from separate annotation campaigns described in different sections of the paper. Some of the underlying raters overlap between the two configs, but the pseudonyms are independent.
| Field | Description |
|-------|-------------|
| `sampleId` | Sample ID |
| `referenceSentenceId` | Reference sentence ID |
| `annotator8` -- `annotator11` | Integer Likert ratings (0--4) per annotator, NaN if not rated |
| `samplePath` | Path to the feature `.npy` file |
**Splits:** `train` (391)
```python
absolute_test = load_dataset("MarcoLents/HaLO", "absolute_test")
```
### `aspect_ratio`
Image aspect ratio for each sample.
| Field | Description |
|-------|-------------|
| `sampleId` | Sample ID |
| `aspectRatio` | Width-to-height ratio of the original image |
| `samplePath` | Path to the feature `.npy` file |
**Splits:** `train` (1,134), `test` (391), `validation` (382)
```python
aspect_ratio = load_dataset("MarcoLents/HaLO", "aspect_ratio")
```
## Feature Files
Pixtral 12B image embeddings are stored as `.npy` files under `features/{referenceSentenceId}/{sampleId}.npy`. Each file contains a 1024-dimensional float32 vector obtained by mean-pooling the token-level outputs of the frozen Pixtral-ViT encoder.
To download the feature files:
```python
from huggingface_hub import snapshot_download
snapshot_download(
repo_id="MarcoLents/HaLO",
repo_type="dataset",
allow_patterns="features/*/*.npy",
local_dir="data"
)
```
## Citation
If you use this dataset, please cite:
```bibtex
@article{bauer2025halo,
title={Ranking handwriting images like a human: AI-based legibility assessment by comparative ranking on the HaLO dataset},
author={Bauer, Meike and Lents, Marco and Schmidt, Erik and Hamann, Tim and Pieger, Lukas and Salata, Susanne and Di Salvo, Francesco and Hoffmann, Tal and Barth, Jens and Ledig, Christian},
year={2025}
}
```
## License
This dataset is released under the [MIT License](LICENSE).
## Acknowledgements
This study was supported by the Hightech Agenda Bayern (HTA) of the Free State of Bavaria, Germany. Additional support was provided by the Bavarian State Ministry of Economic Affairs, Regional Development and Energy (StMWi) as part of the Bavarian Collaborative Research Programme (BayVFP), funding line Digitalization, project KIBEL, grant number DIK0813.