Litcius/Paper detail

Efficient Counterfactual Debiasing for Visual Question Answering

Camila Kolling, Martin D. Móre, Nathan Gavenski, Eduardo Pooch, Otávio Parraga, Rodrigo C. Barros

20222022 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV)33 citationsDOI

Abstract

Despite the success of neural architectures for Visual Question Answering (VQA), several recent studies have shown that VQA models are mostly driven by superficial correlations that are learned by exploiting undesired priors within training datasets. They often lack sufficient image grounding or tend to overly-rely on textual information, failing to capture knowledge from the images. This affects their generalization to test sets with slight changes in the distribution of facts. To address such an issue, some bias mitigation methods have relied on new training procedures that are capable of synthesizing counterfactual samples by masking critical objects within the images, and words within the questions, while also changing the corresponding ground truth. We propose a novel model-agnostic counterfactual training procedure, namely Efficient Counterfactual Debiasing (ECD), in which we introduce a new negative answer-assignment mechanism that exploits the probability distribution of the answers based on their frequencies, as well as an improved counterfactual sample synthesizer. Our experiments demonstrate that ECD is a simple, computationally-efficient counterfactual sample-synthesizer training procedure that establishes itself as the new state of the art for unbiased VQA.

Topics & Concepts

DebiasingCounterfactual thinkingComputer scienceGeneralizationArtificial intelligenceExploitMachine learningPrior probabilitySample (material)Question answeringMathematicsPsychologyComputer securityBayesian probabilityChromatographyCognitive scienceMathematical analysisChemistrySocial psychologyMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot LearningAdvanced Image and Video Retrieval Techniques