TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/CelebV-HQ: A Large-Scale Video Facial Attributes Dataset

CelebV-HQ: A Large-Scale Video Facial Attributes Dataset

Hao Zhu, Wayne Wu, Wentao Zhu, Liming Jiang, Siwei Tang, Li Zhang, Ziwei Liu, Chen Change Loy

2022-07-25AttributeUnconditional Video GenerationFace GenerationVideo Generation
PaperPDFCode(official)

Abstract

Large-scale datasets have played indispensable roles in the recent success of face generation/editing and significantly facilitated the advances of emerging research fields. However, the academic community still lacks a video dataset with diverse facial attribute annotations, which is crucial for the research on face-related videos. In this work, we propose a large-scale, high-quality, and diverse video dataset with rich facial attribute annotations, named the High-Quality Celebrity Video Dataset (CelebV-HQ). CelebV-HQ contains 35,666 video clips with the resolution of 512x512 at least, involving 15,653 identities. All clips are labeled manually with 83 facial attributes, covering appearance, action, and emotion. We conduct a comprehensive analysis in terms of age, ethnicity, brightness stability, motion smoothness, head pose diversity, and data quality to demonstrate the diversity and temporal coherence of CelebV-HQ. Besides, its versatility and potential are validated on two representative tasks, i.e., unconditional video generation and video facial attribute editing. Furthermore, we envision the future potential of CelebV-HQ, as well as the new opportunities and challenges it would bring to related research directions. Data, code, and models are publicly available. Project page: https://celebv-hq.github.io.

Results

TaskDatasetMetricValueModel
VideoCelebV-HQFID17.95StyleGAN-V
VideoCelebV-HQFVD69.17StyleGAN-V
VideoCelebV-HQFID19.39DIGAN
VideoCelebV-HQFVD72.98DIGAN
VideoCelebV-HQFID52.95VideoGPT
VideoCelebV-HQFVD177.89VideoGPT
VideoCelebV-HQFID21.55MoCoGAN-HD
VideoCelebV-HQFVD212.41MoCoGAN-HD
Video GenerationCelebV-HQFID17.95StyleGAN-V
Video GenerationCelebV-HQFVD69.17StyleGAN-V
Video GenerationCelebV-HQFID19.39DIGAN
Video GenerationCelebV-HQFVD72.98DIGAN
Video GenerationCelebV-HQFID52.95VideoGPT
Video GenerationCelebV-HQFVD177.89VideoGPT
Video GenerationCelebV-HQFID21.55MoCoGAN-HD
Video GenerationCelebV-HQFVD212.41MoCoGAN-HD

Related Papers

World Model-Based End-to-End Scene Generation for Accident Anticipation in Autonomous Driving2025-07-17Leveraging Pre-Trained Visual Models for AI-Generated Video Detection2025-07-17Taming Diffusion Transformer for Real-Time Mobile Video Generation2025-07-17LoViC: Efficient Long Video Generation with Context Compression2025-07-17MGFFD-VLM: Multi-Granularity Prompt Learning for Face Forgery Detection with VLM2025-07-16Non-Adaptive Adversarial Face Generation2025-07-16Attributes Shape the Embedding Space of Face Recognition Models2025-07-15COLIBRI Fuzzy Model: Color Linguistic-Based Representation and Interpretation2025-07-15