Navigating Text-to-Image Generative Bias across Indic Languages

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Abstract

This research delves into evaluating the effectiveness of text-to-image (T2I) models specifically tailored for Indic languages prevalent across India. It scrutinizes the comparative generative capabilities of popular T2I models in Indic languages specifically against their performance in English. With this benchmark, we meticulously assess 30 Indic languages utilizing 2 open-source diffusion models and 2 commercial APIs for generation. The primary objective of this benchmark is to gauge the adequacy of support offered by these models for Indic languages while pinpointing areas that require enhancement. With a linguistic diversity encompassing 30 languages spoken by a population exceeding a billion, the benchmark endeavors to deliver a thorough and insightful evaluation of T2I models within the realm of Indic languages.

Citation History

Jan 26, 2026
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Jan 27, 2026
4