pointerbench / README.md
DerHansVader's picture
Add leaderboard contact link
e53e45e verified
|
Raw
History Blame Contribute Delete
3.43 kB
---
license: cc-by-4.0
task_categories:
- image-to-text
- visual-question-answering
language:
- en
- de
- fr
- es
- it
- nl
tags:
- gui-grounding
- computer-use
- benchmark
- screenshots
- synthetic-data
- spreadsheets
- text-grounding
- professional-apps
pretty_name: Pointerbench
size_categories:
- 1K<n<10K
---
# Pointerbench
Pointerbench is a small GUI grounding benchmark suite for computer-use models.
Each example has one screenshot, one instruction, target geometry in absolute
pixels, and a binary evaluation rule.
Links:
- GitHub: https://github.com/warmwindOS/pointerbench
- Blog post: https://about.warmwind.com/pointer-bench/
- Pointer 1.5 post: https://about.warmwind.com/pointer-1-5-teaching-ai-to-click/
- Add your model to the official benchmark leaderboard: https://warmwind.com/contact
- 🔴 Placeholder: Pointer 1.5 model GitHub repository will be added later.
The suite has three subsets:
| Subset | Examples | What it tests |
| --- | ---: | --- |
| `pointerbench-sheets` | 500 | Spreadsheet cells, colors, headers, edges, corners, and relative positions |
| `pointerbench-text` | 500 | Words, characters, punctuation, caret positions, chrome text, and text bounding boxes |
| `pointerbench-pro` | 500 | Icons, text, and mixed GUI targets across 100 professional applications |
All images are synthetic 1024x768 PNG screenshots. The datasets contain no
scraped user data and no PII.
## Layout
Each subset is self-contained:
```text
pointerbench-sheets/
data/test/metadata.jsonl
data/test/0000.png
eval.py
README.md
REPRODUCE.md
pointerbench-text/
data/test/metadata.jsonl
data/test/0000.png
eval.py
README.md
REPRODUCE.md
pointerbench-pro/
data/test/metadata.jsonl
data/test/0000.png
eval.py
README.md
REPRODUCE.md
```
## Schema
Each metadata row includes:
```json
{
"file_name": "0000.png",
"id": "pbs_0000",
"instruction": "Click cell E11.",
"bbox": [x1, y1, x2, y2],
"point": [x, y],
"answer_type": "point",
"eval": {"type": "point_in_bbox", "bbox": [x1, y1, x2, y2]},
"data_type": "cell",
"category": "cell_ref",
"image_size": [1024, 768]
}
```
Point tasks are correct when the predicted point lands inside the target bbox.
Bbox tasks, used in Pointerbench-Text, are correct when the predicted bbox
reaches the configured IoU threshold.
## Evaluation
Run the scorer inside a subset folder:
```bash
python eval.py --predictions preds.jsonl
```
Predictions are JSONL rows with an `id` and either a `point` or `bbox`, depending
on `answer_type`.
Recommended inference prompt:
```bash
python eval.py --show-system-prompt
```
```text
You are evaluating Pointerbench, a GUI grounding benchmark. You will receive one 1024x768 screenshot and one task instruction. Use absolute pixel coordinates with origin at the top-left of the image. Do not return normalized coordinates. Do not crop or resize the coordinate frame. For point tasks, return JSON like {"point": [x, y]}. For bounding-box tasks, return JSON like {"bbox": [x0, y0, x1, y1]}.
```
You can edit the prompt for your inference stack. Keep the 1024x768 absolute
pixel coordinate frame fixed, and report any image resizing or multi-step zoom
strategy with your results.
See each subset README for the exact distribution, schema details, and examples.
## License
Dataset images and annotations are released under CC BY 4.0. The included
evaluation scripts are released under MIT.