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PaLI-3 Vision Language Models: Smaller, Faster, Stronger

Authors :
Chen, Xi
Wang, Xiao
Beyer, Lucas
Kolesnikov, Alexander
Wu, Jialin
Voigtlaender, Paul
Mustafa, Basil
Goodman, Sebastian
Alabdulmohsin, Ibrahim
Padlewski, Piotr
Salz, Daniel
Xiong, Xi
Vlasic, Daniel
Pavetic, Filip
Rong, Keran
Yu, Tianli
Keysers, Daniel
Zhai, Xiaohua
Soricut, Radu
Publication Year :
2023

Abstract

This paper presents PaLI-3, a smaller, faster, and stronger vision language model (VLM) that compares favorably to similar models that are 10x larger. As part of arriving at this strong performance, we compare Vision Transformer (ViT) models pretrained using classification objectives to contrastively (SigLIP) pretrained ones. We find that, while slightly underperforming on standard image classification benchmarks, SigLIP-based PaLI shows superior performance across various multimodal benchmarks, especially on localization and visually-situated text understanding. We scale the SigLIP image encoder up to 2 billion parameters, and achieves a new state-of-the-art on multilingual cross-modal retrieval. We hope that PaLI-3, at only 5B parameters, rekindles research on fundamental pieces of complex VLMs, and could fuel a new generation of scaled-up models.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.09199
Document Type :
Working Paper