Guardado en:
Detalles Bibliográficos
Autores principales: Patwari, Kartik, Schneider, David, Sun, Xiaoxiao, Chuah, Chen-Nee, Lyu, Lingjuan, Sharma, Vivek
Formato: Preprint
Publicado: 2024
Materias:
Acceso en línea:https://arxiv.org/abs/2412.06248
Etiquetas: Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
_version_ 1866913602504491008
author Patwari, Kartik
Schneider, David
Sun, Xiaoxiao
Chuah, Chen-Nee
Lyu, Lingjuan
Sharma, Vivek
author_facet Patwari, Kartik
Schneider, David
Sun, Xiaoxiao
Chuah, Chen-Nee
Lyu, Lingjuan
Sharma, Vivek
contents Growing privacy concerns and regulations like GDPR and CCPA necessitate pseudonymization techniques that protect identity in image datasets. However, retaining utility is also essential. Traditional methods like masking and blurring degrade quality and obscure critical context, especially in human-centric images. We introduce Rendering-Refined Stable Diffusion (RefSD), a pipeline that combines 3D-rendering with Stable Diffusion, enabling prompt-based control over human attributes while preserving posture. Unlike standard diffusion models that fail to retain posture or GANs that lack realism and flexible attribute control, RefSD balances posture preservation, realism, and customization. We also propose HumanGenAI, a framework for human perception and utility evaluation. Human perception assessments reveal attribute-specific strengths and weaknesses of RefSD. Our utility experiments show that models trained on RefSD pseudonymized data outperform those trained on real data in detection tasks, with further performance gains when combining RefSD with real data. For classification tasks, we consistently observe performance improvements when using RefSD data with real data, confirming the utility of our pseudonymized data.
format Preprint
id arxiv_https___arxiv_org_abs_2412_06248
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Rendering-Refined Stable Diffusion for Privacy Compliant Synthetic Data
Patwari, Kartik
Schneider, David
Sun, Xiaoxiao
Chuah, Chen-Nee
Lyu, Lingjuan
Sharma, Vivek
Computer Vision and Pattern Recognition
Growing privacy concerns and regulations like GDPR and CCPA necessitate pseudonymization techniques that protect identity in image datasets. However, retaining utility is also essential. Traditional methods like masking and blurring degrade quality and obscure critical context, especially in human-centric images. We introduce Rendering-Refined Stable Diffusion (RefSD), a pipeline that combines 3D-rendering with Stable Diffusion, enabling prompt-based control over human attributes while preserving posture. Unlike standard diffusion models that fail to retain posture or GANs that lack realism and flexible attribute control, RefSD balances posture preservation, realism, and customization. We also propose HumanGenAI, a framework for human perception and utility evaluation. Human perception assessments reveal attribute-specific strengths and weaknesses of RefSD. Our utility experiments show that models trained on RefSD pseudonymized data outperform those trained on real data in detection tasks, with further performance gains when combining RefSD with real data. For classification tasks, we consistently observe performance improvements when using RefSD data with real data, confirming the utility of our pseudonymized data.
title Rendering-Refined Stable Diffusion for Privacy Compliant Synthetic Data
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.06248