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Main Authors: Nachesa, Maya K., Niculae, Vlad, Gautam, Vagrant
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.30472
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author Nachesa, Maya K.
Niculae, Vlad
Gautam, Vagrant
author_facet Nachesa, Maya K.
Niculae, Vlad
Gautam, Vagrant
contents As large neural models have become better at language tasks, researchers are increasingly building multi- and omnimodal models that handle more modalities of data. One example is the expansion of speech recognition models to audio-visual data for noise mitigation and multimodal subtitling. While performance and bias have been studied extensively in the single-modality regime, it is unknown how new modalities affect this, even though they produce biases in humans. We therefore propose the first bias evaluation of multimodal speech recognition, where we create videos pairing different faces with the same audio, and measure changes in speech transcription accuracy. We find large quality-of-service differences across mWhisper-Flamingo and Gemini models, with drops of up to 4.05 word error rate points, across self-declared gender, ethnicity, and their intersection. Our findings point to a priority for developers to evaluate, fix, and communicate such limitations, as providing more signals through additional modalities is not necessarily better, and may even lead to biased outcomes.
format Preprint
id arxiv_https___arxiv_org_abs_2605_30472
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Your Multimodal Speech Model Says I Have a Face for Radio
Nachesa, Maya K.
Niculae, Vlad
Gautam, Vagrant
Computation and Language
As large neural models have become better at language tasks, researchers are increasingly building multi- and omnimodal models that handle more modalities of data. One example is the expansion of speech recognition models to audio-visual data for noise mitigation and multimodal subtitling. While performance and bias have been studied extensively in the single-modality regime, it is unknown how new modalities affect this, even though they produce biases in humans. We therefore propose the first bias evaluation of multimodal speech recognition, where we create videos pairing different faces with the same audio, and measure changes in speech transcription accuracy. We find large quality-of-service differences across mWhisper-Flamingo and Gemini models, with drops of up to 4.05 word error rate points, across self-declared gender, ethnicity, and their intersection. Our findings point to a priority for developers to evaluate, fix, and communicate such limitations, as providing more signals through additional modalities is not necessarily better, and may even lead to biased outcomes.
title Your Multimodal Speech Model Says I Have a Face for Radio
topic Computation and Language
url https://arxiv.org/abs/2605.30472