CVDBMar 3, 2021

K-FACE: A Large-Scale KIST Face Database in Consideration with Unconstrained Environments

arXiv:2103.02211v211 citations
Originality Synthesis-oriented
AI Analysis

This database addresses the need for diverse and balanced datasets in computer vision, particularly for face-related tasks, though it is incremental as it builds on existing data collection efforts.

The researchers introduced K-FACE, a large-scale face database with over 1 million images of 1,000 subjects, designed to analyze performance degradation factors like poses, lighting, and accessories in unconstrained environments.

In this paper, we introduce a new large-scale face database from KIST, denoted as K-FACE, and describe a novel capturing device specifically designed to obtain the data. The K-FACE database contains more than 1 million high-quality images of 1,000 subjects selected by considering the ratio of gender and age groups. It includes a variety of attributes, including 27 poses, 35 lighting conditions, three expressions, and occlusions by the combination of five types of accessories. As the K-FACE database is systematically constructed through a hemispherical capturing system with elaborate lighting control and multiple cameras, it is possible to accurately analyze the effects of factors that cause performance degradation, such as poses, lighting changes, and accessories. We consider not only the balance of external environmental factors, such as pose and lighting, but also the balance of personal characteristics such as gender and age group. The gender ratio is the same, while the age groups of subjects are uniformly distributed from the 20s to 50s for both genders. The K-FACE database can be extensively utilized in various vision tasks, such as face recognition, face frontalization, illumination normalization, face age estimation, and three-dimensional face model generation. We expect systematic diversity and uniformity of the K-FACE database to promote these research fields.

Code Implementations1 repo
Foundations

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

Your Notes