Litcius/Paper detail

Model-Agnostic Gender Debiased Image Captioning

Yusuke Hirota, Yuta Nakashima, Noa García

202310 citationsDOI

Abstract

Image captioning models are known to perpetuate and amplify harmful societal bias in the training set. In this work, we aim to mitigate such gender bias in image captioning models. While prior work has addressed this problem by forcing models to focus on people to reduce gender mis-classification, it conversely generates gender-stereotypical words at the expense of predicting the correct gender. From this observation, we hypothesize that there are two types of gender bias affecting image captioning models: 1) bias that exploits context to predict gender, and 2) bias in the probability of generating certain (often stereotypical) words because of gender. To mitigate both types of gender biases, we propose a framework, called LIBRA, that learns from synthetically biased samples to decrease both types of biases, correcting gender misclassification and changing gender-stereotypical words to more neutral ones.

Topics & Concepts

Closed captioningGender biasComputer scienceContext (archaeology)Set (abstract data type)Focus (optics)Forcing (mathematics)Image (mathematics)Artificial intelligenceNatural language processingPsychologySocial psychologyMathematicsBiologyMathematical analysisPaleontologyOpticsProgramming languagePhysicsMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot LearningHuman Pose and Action Recognition