PACS / README.md
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metadata
license: mit
task_categories:
  - image-classification
tags:
  - domain-generalization
  - computer-vision
  - benchmark
pretty_name: PACS

PACS Dataset

Overview

PACS is a benchmark dataset for domain generalization in image classification, introduced in "Deeper, Broader and Artier Domain Generalization" (Li et al., ICCV 2017).

It contains 9,991 images across 4 domains and 7 object categories, with significantly larger domain shift than prior benchmarks like VLCS — averaging a 20.2% cross-domain performance drop versus 10.0% for VLCS.

Domains

Domain Description
P — Photo Real photographs
A — Art Painting Artistic paintings
C — Cartoon Cartoon-style illustrations
S — Sketch Hand-drawn sketches

Classes

7 categories: dog, elephant, giraffe, guitar, horse, house, person

Dataset Statistics

Domain Images
Photo ~1,670
Art Painting ~2,048
Cartoon ~2,344
Sketch ~3,929
Total 9,991

Usage

The standard evaluation protocol is leave-one-domain-out: train on 3 domains, test on the held-out domain. This yields 4 cross-domain tasks:

  • Train on A, C, S → Test on P
  • Train on P, C, S → Test on A
  • Train on P, A, S → Test on C
  • Train on P, A, C → Test on S

Citation

@inproceedings{li2017deeper,
  title={Deeper, Broader and Artier Domain Generalization},
  author={Li, Da and Yang, Yongxin and Song, Yi-Zhe and Hospedales, Timothy M},
  booktitle={ICCV},
  year={2017}
}

Uploaded By

Mohammed Azeez Khan — used for domain generalization experiments at Carnegie Mellon University (EEG P300, motor imagery, fMRI neuroimaging).