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Benchmarking Zero-Shot Recognition with Vision-Language Models: Challenges on Granularity and Specificity

Authors :
Xu, Zhenlin
Zhu, Yi
Deng, Tiffany
Mittal, Abhay
Chen, Yanbei
Wang, Manchen
Favaro, Paolo
Tighe, Joseph
Modolo, Davide
Publication Year :
2023

Abstract

This paper presents novel benchmarks for evaluating vision-language models (VLMs) in zero-shot recognition, focusing on granularity and specificity. Although VLMs excel in tasks like image captioning, they face challenges in open-world settings. Our benchmarks test VLMs' consistency in understanding concepts across semantic granularity levels and their response to varying text specificity. Findings show that VLMs favor moderately fine-grained concepts and struggle with specificity, often misjudging texts that differ from their training data. Extensive evaluations reveal limitations in current VLMs, particularly in distinguishing between correct and subtly incorrect descriptions. While fine-tuning offers some improvements, it doesn't fully address these issues, highlighting the need for VLMs with enhanced generalization capabilities for real-world applications. This study provides insights into VLM limitations and suggests directions for developing more robust models.<br />Comment: CVPR2024 MMFM workshop

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.16048
Document Type :
Working Paper