image
imagewidth (px)
512
512
conditioning_image
imagewidth (px)
512
512
text
stringlengths
5
111
a woman wearing a tia
a woman with blonde hair and blue eyes
a woman with curly hair
a smiling woman
a woman with a white headband
a woman with blue eyes
a woman wearing a hat
a model wearing a pair of earrings
a woman with long hair
a young man
a man
a woman with blonde hair
a model with long blonde hair
a model with long blonde hair
a woman with a soccer ball
a woman with long hair
a woman with a red scarf around her neck
a woman with blonde hair
a woman with long black hair
a young girl with blue eyes
a woman with blonde hair
a woman with long blonde hair
a model with a white bow on her head
a woman with dark hair
a woman with a bandanap on her head
a woman with long brown hair
a woman with long brown hair
a woman with short hair
a woman with long blonde hair
a woman getting her makeup done
a man with a beard
a woman with black hair
a young man smiling for the camera
a woman with short hair
a man with long blonde hair
a woman with bangs and bangs
a woman with dark hair and earrings
a man with a mustache
a woman with long brown hair
a man smiling for the camera
a man with long brown hair
a woman with blonde hair
a model with blue eyes
a man with green hair
a woman with blonde hair
a woman with long blonde hair and blue eyes
a woman with blonde hair
a woman
a woman with long hair
a man with black spots on his face
a woman with long brown hair
a woman with long hair
a man with long hair and glasses
a woman with a messy ponytail
a woman with a smile on her face
a beautiful young woman with green eyes
a woman with long brown hair
a woman with long blonde hair
a woman with red lipstick
a woman with long brown hair
a woman sticking her tongue out
a woman with short hair
a man in military uniform
a woman with long brown hair
a bald bald man
a woman with long black hair
a woman with blue eyes
a woman with long brown hair
a woman with blue eyes
a woman smiling and wearing earrings
a woman with long blonde hair
a woman with blonde hair
a woman with blonde hair
a woman with blonde hair
a woman with long brown hair
a model with a messy updo
a woman with short hair
a model with red lipstick
a woman with short hair and a red lipstick
a woman with long black hair
a man in a suit and tie
a woman with red hair
a woman with blonde hair
a woman with a red lipstick
a woman with red hair
a woman with blue eyes
a woman with long black hair
a woman with long black hair
a woman with long black hair
a man with a smile on his face
a woman with blue eyes
a woman with blonde hair and blue eyes
a man in a green shirt
a woman wearing a headband
a man with a red hat
a woman with red hair
a man with a beard
a man in a suit and tie
a woman with black hair
a woman with blonde hair

Dataset Card for Control-CelebA-HQ

Overview

Dataset Name: Control-CelebA-HQ
Description: An enhanced version of the CelebA-HQ dataset, Control-CelebA-HQ is specifically designed for evaluating the controlling ability of controllable generative models. This dataset is featured in the NeurIPS 2023 work titled "Controlling Text-to-Image Diffusion by Orthogonal Finetuning (OFT)", and is pivotal in evaluating the control ability of the controllable generative models.
Dataset Type: Generative Model, Controllable Generation, PEFT
Official Page: https://oft.wyliu.com/

Dataset Structure

Data Format: Images with paired facial landmarks
Size: Training set - 29.5k images; Testing set - 500 images
Resolution: High Quality (CelebA-HQ standard)
Attributes: Facial features with color-coded facial landmarks for controllable generation

Data Collection and Preparation

Source: Derived from the CelebA-HQ dataset
Collection Method: Original CelebA-HQ images processed with a standard face alignment tracker (available at https://github.com/1adrianb/face-alignment) for facial landmark detection
Data Split: 29.5k images for training, 500 images for testing

Dataset Use and Access

Recommended Uses: Training and testing controllable generative models, particularly in the context of facial image generation with landmark-based control
User Guidelines: To use the dataset, train models on the training set using facial landmarks as control signals. For testing, generate images with landmarks as control and evaluate control consistency error between input and generated image's landmarks. Please cite the OFT paper when using this dataset and protocol.

Note: Example usage and evaluation script will come out soon in Huggingface PEFT and Diffusers example. Stay tuned:D

Citation:

@InProceedings{Qiu2023OFT,
  title={Controlling Text-to-Image Diffusion by Orthogonal Finetuning},
  author={Qiu, Zeju and Liu, Weiyang and Feng, Haiwen and Xue, Yuxuan and Feng, Yao and Liu, Zhen and Zhang, Dan and Weller, Adrian and Schölkopf, Bernhard},
  booktitle={NeurIPS},
  year={2023}
}
Downloads last month
57
Edit dataset card