tanganke/clip-vit-base-patch32_dtd
Feature Extraction
•
Updated
•
865
image
imagewidth (px) 271
849
| label
class label 47
classes |
---|---|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
0banded
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
|
1blotchy
|
The Describable Textures Dataset (DTD) is an evolving collection of textural images in the wild, annotated with a series of human-centric attributes, inspired by the perceptual properties of textures. This data is made available to the computer vision community for research purposes
from datasets import load_dataset
dataset = load_dataset('tanganke/dtd')
Features:
Splits: The dataset is divided into training and test subsets for model evaluation.