CVAIMay 2, 2024

Towards Inclusive Face Recognition Through Synthetic Ethnicity Alteration

arXiv:2405.01273v25 citationsh-index: 26FG
Originality Synthesis-oriented
AI Analysis

This work addresses bias in face recognition for underrepresented ethnic groups, but it is incremental as it builds on existing GAN and manifold learning models.

The paper tackled bias in face recognition systems by using synthetic methods to alter ethnicity and skin tone in datasets, finding that this approach can help create more diverse datasets for mitigating bias.

Numerous studies have shown that existing Face Recognition Systems (FRS), including commercial ones, often exhibit biases toward certain ethnicities due to under-represented data. In this work, we explore ethnicity alteration and skin tone modification using synthetic face image generation methods to increase the diversity of datasets. We conduct a detailed analysis by first constructing a balanced face image dataset representing three ethnicities: Asian, Black, and Indian. We then make use of existing Generative Adversarial Network-based (GAN) image-to-image translation and manifold learning models to alter the ethnicity from one to another. A systematic analysis is further conducted to assess the suitability of such datasets for FRS by studying the realistic skin-tone representation using Individual Typology Angle (ITA). Further, we also analyze the quality characteristics using existing Face image quality assessment (FIQA) approaches. We then provide a holistic FRS performance analysis using four different systems. Our findings pave the way for future research works in (i) developing both specific ethnicity and general (any to any) ethnicity alteration models, (ii) expanding such approaches to create databases with diverse skin tones, (iii) creating datasets representing various ethnicities which further can help in mitigating bias while addressing privacy concerns.

Foundations

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

Your Notes