Few Shots Text to Image Retrieval: New Benchmarking Dataset and Optimization Methods
Ofer Idan, Vladi Vexler, Gil Lederman, Dima Sivov, Aviad Cohen Zada, Shir Niego Komforti

TL;DR
This paper introduces a new benchmark dataset and optimization methods for few-shot text-to-image retrieval, addressing challenges in compositional and out-of-distribution queries.
Contribution
The paper presents the FSIR-BD benchmark dataset and novel retrieval optimization techniques compatible with pre-trained encoders.
Findings
FSIR-BD is a challenging new benchmark for image retrieval.
Proposed methods outperform existing baselines in mean Average Precision.
Optimization techniques improve retrieval performance with limited reference examples.
Abstract
Pre-trained vision-language models (VLMs) excel in multimodal tasks, commonly encoding images as embedding vectors for storage in databases and retrieval via approximate nearest neighbor search (ANNS). However, these models struggle with compositional queries and out-of-distribution (OOD) image-text pairs. Inspired by human cognition's ability to learn from minimal examples, we address this performance gap through few-shot learning approaches specifically designed for image retrieval. We introduce the Few-Shot Text-to-Image Retrieval (FSIR) task and its accompanying benchmark dataset, FSIR-BD - the first to explicitly target image retrieval by text accompanied by reference examples, focusing on the challenging compositional and OOD queries. The compositional part is divided to urban scenes and nature species, both in specific situations or with distinctive features. FSIR-BD contains…
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