VI-Probe / README.md
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Rename class id to case id
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metadata
license: cc-by-4.0
task_categories:
  - visual-question-answering
language:
  - en
tags:
  - vision-language-models
  - visual-illusions
  - benchmark
  - perception
  - probing
size_categories:
  - 1K<n<10K
pretty_name: VI-Probe
configs:
  - config_name: default
    data_files:
      - split: test
        path: test.parquet

VI-Probe

This dataset accompanies the paper Do VLMs Perceive or Recall? Probing Visual Perception vs. Memory with Classic Visual Illusions.

VI-Probe is a controllable visual-illusion benchmark for probing whether vision-language models respond based on visual perception or recall/memorized priors. The dataset includes classic visual illusion cases with original images, graded perturbations, matched controls, visual guide variants, and reverse-prompt variants.

This folder is organized by illusion case for easy inspection, with flat metadata for Hugging Face preview and grouped reporting.

Files

  • test.parquet: viewer-ready table with an image column and one row per image-prompt pair, including reverse-prompt rows (is_rp=1).
  • metadata.csv: CSV copy of the same metadata for lightweight scripting.
  • summary_by_type.csv: counts grouped by category, type, reverse-prompt flag, and answer.
  • summary_by_case_type.csv: counts grouped by class and type.
  • dataset_order.csv: 27-class order used in the benchmark.
  • class_image_type_counts.csv: image counts for each class and sample type.

Folder Structure

The image files are organized by illusion category and case for manual inspection:

VI-Probe/
  README.md
  test.parquet
  metadata.csv
  dataset_order.csv
  summary_by_type.csv
  summary_by_case_type.csv
  class_image_type_counts.csv
  1_illusion_size/
    1_MullerLyerIllusion/
      original/
      perturbed/
      original_control/
      perturbed_control/
      original_with_guide/
      perturbed_with_guide/
    ...
  2_illusion_color/
    12_CornswweetIllusion/
      original/
      perturbed/
      original_control/
      perturbed_control/
      original_with_guide/
      perturbed_with_guide/
    ...
  3_illusion_orientation/
    19_HeringIllusion/
      original/
      perturbed/
      original_control/
      perturbed_control/
      original_with_guide/
      perturbed_with_guide/
    ...

Each row in test.parquet and metadata.csv points to one image-prompt pair. The same image appears twice when both the regular prompt and reverse prompt are included; use is_rp to distinguish them.

Loading

Load the benchmark split directly with Hugging Face Datasets:

from datasets import load_dataset

ds = load_dataset("xxsun/VI-Probe", split="test")

example = ds[0]
image = example["image"]
prompt = example["prompt"]
answer = example["answer"]

Useful columns:

column description
image PIL image object loaded by Hugging Face Datasets
image_path relative path to the image file in the repository
case_id 1-27 illusion case id
illusion_name illusion case name
category size, color, or orientation
type original, perturbed, original_control, perturbed_control, original_with_guide, or perturbed_with_guide
base_scale base stimulus scale
strength perturbation strength
is_rp whether the row uses the reverse prompt
prompt VQA prompt
answer Yes or No
answer_value numeric answer, 1 for Yes and 0 for No

Example grouping for reporting:

df = ds.to_pandas()
summary = (
    df.groupby(["type", "is_rp", "category"])["answer"]
    .value_counts()
    .reset_index(name="count")
)

Overall Counts

  • Unique images: 9570
  • Metadata rows including reverse prompts: 19140
  • Split: test
  • Non-reverse prompt rows: 9570
  • Reverse prompt rows: 9570

Non-RP Counts By Type

type count
original 290
perturbed 2900
original_control 290
perturbed_control 2900
original_with_guide 290
perturbed_with_guide 2900

Non-RP Counts By Category

category count
size 3993
color 2310
orientation 3267

Reporting Recommendation

Use the flat metadata.csv for evaluation and group results by type, is_rp, category, and case_id. Keep the image files organized by case so per-illusion inspection remains easy.

Citation

If you use VI-Probe, please cite:

@inproceedings{sun2026vlms,
  title={Do VLMs Perceive or Recall? Probing Visual Perception vs. Memory with Classic Visual Illusions},
  author={Sun, Xiaoxiao and Li, Mingyang and Yuan, Kun and Sun, Min Woo and Endo, Mark and Wu, Shengguang and Li, Changlin and Zhang, Yuhui and Wang, Zeyu and Yeung-Levy, Serena},
  booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
  pages={25861--25870},
  year={2026}
}