DOIONLINE

DOIONLINE NO - IJAECS-IRAJ-DOIONLINE-19867

Publish In
International Journal of Advances in Electronics and Computer Science-IJAECS
Journal Home
Volume Issue
Issue
Volume-10,Issue-6  ( Jun, 2023 )
Paper Title
Image Captioning and Facial Attribute Analysis
Author Name
Manish Gupta, Himanshu Kumar, Mayank Kumar Gond, Manoj Sethi
Affilition
Department of Computer Science and Engineering, Delhi Technological University Delhi, india
Pages
39-44
Abstract
This research paper addresses the issue of racial bias in existing public facial image datasets, which are heavily skewed toward Caucasian faces and underrepresented other races such as Latino. To address this issue, the researchers created a new facial image dataset that adjusted for race, with images classified into seven racial categories. Evaluations were conducted on existing and new datasets, with the model trained on the new dataset performing significantly better and with consistent accuracy across race and gender groups. The researchers also developed a method for finding semantically similar images using convolutional neural network activations and selecting captions based on unigram frequency. Additionally, they created an application for mining semantic descriptions from facial attributes to understand beauty, using a completely data-driven approach. Experimental results showed that beauty semantics are reasonable and beneficial for modification. Overall, this paper provides important insights into addressing racial bias in facial image datasets and developing new methods for analyzing facial attributes. Keywords - Racial bias, facial image datasets, Latino underrepresentation, Race classification, Convolutional Neural Network, Semantically similar images, unigram frequency, beauty understanding
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