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Main Authors: Sampat, Shailaja Keyur, Nakamura, Mutsumi, Kailas, Shankar, Aggarwal, Kartik, Zhou, Mandy, Yang, Yezhou, Baral, Chitta
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.13666
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author Sampat, Shailaja Keyur
Nakamura, Mutsumi
Kailas, Shankar
Aggarwal, Kartik
Zhou, Mandy
Yang, Yezhou
Baral, Chitta
author_facet Sampat, Shailaja Keyur
Nakamura, Mutsumi
Kailas, Shankar
Aggarwal, Kartik
Zhou, Mandy
Yang, Yezhou
Baral, Chitta
contents Deriving inference from heterogeneous inputs (such as images, text, and audio) is an important skill for humans to perform day-to-day tasks. A similar ability is desirable for the development of advanced Artificial Intelligence (AI) systems. While state-of-the-art models are rapidly closing the gap with human-level performance on diverse computer vision and NLP tasks separately, they struggle to solve tasks that require joint reasoning over visual and textual modalities. Inspired by GLUE (Wang et. al., 2018)- a multitask benchmark for natural language understanding, we propose VL-GLUE in this paper. VL-GLUE consists of over 100k samples spanned across seven different tasks, which at their core require visuo-linguistic reasoning. Moreover, our benchmark comprises of diverse image types (from synthetically rendered figures, and day-to-day scenes to charts and complex diagrams) and includes a broad variety of domain-specific text (from cooking, politics, and sports to high-school curricula), demonstrating the need for multi-modal understanding in the real-world. We show that this benchmark is quite challenging for existing large-scale vision-language models and encourage development of systems that possess robust visuo-linguistic reasoning capabilities.
format Preprint
id arxiv_https___arxiv_org_abs_2410_13666
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle VL-GLUE: A Suite of Fundamental yet Challenging Visuo-Linguistic Reasoning Tasks
Sampat, Shailaja Keyur
Nakamura, Mutsumi
Kailas, Shankar
Aggarwal, Kartik
Zhou, Mandy
Yang, Yezhou
Baral, Chitta
Computer Vision and Pattern Recognition
Computation and Language
Deriving inference from heterogeneous inputs (such as images, text, and audio) is an important skill for humans to perform day-to-day tasks. A similar ability is desirable for the development of advanced Artificial Intelligence (AI) systems. While state-of-the-art models are rapidly closing the gap with human-level performance on diverse computer vision and NLP tasks separately, they struggle to solve tasks that require joint reasoning over visual and textual modalities. Inspired by GLUE (Wang et. al., 2018)- a multitask benchmark for natural language understanding, we propose VL-GLUE in this paper. VL-GLUE consists of over 100k samples spanned across seven different tasks, which at their core require visuo-linguistic reasoning. Moreover, our benchmark comprises of diverse image types (from synthetically rendered figures, and day-to-day scenes to charts and complex diagrams) and includes a broad variety of domain-specific text (from cooking, politics, and sports to high-school curricula), demonstrating the need for multi-modal understanding in the real-world. We show that this benchmark is quite challenging for existing large-scale vision-language models and encourage development of systems that possess robust visuo-linguistic reasoning capabilities.
title VL-GLUE: A Suite of Fundamental yet Challenging Visuo-Linguistic Reasoning Tasks
topic Computer Vision and Pattern Recognition
Computation and Language
url https://arxiv.org/abs/2410.13666