CVJun 17, 2021

Indian Masked Faces in the Wild Dataset

arXiv:2106.09670v11 citations
Originality Synthesis-oriented
AI Analysis

This addresses face recognition challenges for researchers and practitioners in India and similar regions, but it is incremental as it adds cultural diversity to existing masked face datasets.

The authors tackled the problem of face recognition with diverse masks, especially in Indian contexts, by creating the Indian Masked Faces in the Wild (IMFW) dataset, and benchmarking showed existing algorithms have limitations under these conditions.

Due to the COVID-19 pandemic, wearing face masks has become a mandate in public places worldwide. Face masks occlude a significant portion of the facial region. Additionally, people wear different types of masks, from simple ones to ones with graphics and prints. These pose new challenges to face recognition algorithms. Researchers have recently proposed a few masked face datasets for designing algorithms to overcome the challenges of masked face recognition. However, existing datasets lack the cultural diversity and collection in the unrestricted settings. Country like India with attire diversity, people are not limited to wearing traditional masks but also clothing like a thin cotton printed towel (locally called as ``gamcha''), ``stoles'', and ``handkerchiefs'' to cover their faces. In this paper, we present a novel \textbf{Indian Masked Faces in the Wild (IMFW)} dataset which contains images with variations in pose, illumination, resolution, and the variety of masks worn by the subjects. We have also benchmarked the performance of existing face recognition models on the proposed IMFW dataset. Experimental results demonstrate the limitations of existing algorithms in presence of diverse conditions.

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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