CVJul 11, 2022

Going the Extra Mile in Face Image Quality Assessment: A Novel Database and Model

arXiv:2207.04904v233 citationsh-index: 69
Originality Incremental advance
AI Analysis

This work addresses a bottleneck in computer vision for applications like face superresolution and editing, though it is incremental as it builds on existing IQA methods.

The authors tackled the lack of data and models for face image quality assessment by introducing a new database with 20,000 annotated human faces and a novel deep learning model that uses generative priors, achieving superior performance in experiments.

An accurate computational model for image quality assessment (IQA) benefits many vision applications, such as image filtering, image processing, and image generation. Although the study of face images is an important subfield in computer vision research, the lack of face IQA data and models limits the precision of current IQA metrics on face image processing tasks such as face superresolution, face enhancement, and face editing. To narrow this gap, in this paper, we first introduce the largest annotated IQA database developed to date, which contains 20,000 human faces -- an order of magnitude larger than all existing rated datasets of faces -- of diverse individuals in highly varied circumstances. Based on the database, we further propose a novel deep learning model to accurately predict face image quality, which, for the first time, explores the use of generative priors for IQA. By taking advantage of rich statistics encoded in well pretrained off-the-shelf generative models, we obtain generative prior information and use it as latent references to facilitate blind IQA. The experimental results demonstrate both the value of the proposed dataset for face IQA and the superior performance of the proposed model.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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