An analysis of vision-language models for fabric retrieval
By: Francesco Giuliari , Asif Khan Pattan , Mohamed Lamine Mekhalfi and more
Potential Business Impact:
Find fabric pictures using text descriptions.
Effective cross-modal retrieval is essential for applications like information retrieval and recommendation systems, particularly in specialized domains such as manufacturing, where product information often consists of visual samples paired with a textual description. This paper investigates the use of Vision Language Models(VLMs) for zero-shot text-to-image retrieval on fabric samples. We address the lack of publicly available datasets by introducing an automated annotation pipeline that uses Multimodal Large Language Models (MLLMs) to generate two types of textual descriptions: freeform natural language and structured attribute-based descriptions. We produce these descriptions to evaluate retrieval performance across three Vision-Language Models: CLIP, LAION-CLIP, and Meta's Perception Encoder. Our experiments demonstrate that structured, attribute-rich descriptions significantly enhance retrieval accuracy, particularly for visually complex fabric classes, with the Perception Encoder outperforming other models due to its robust feature alignment capabilities. However, zero-shot retrieval remains challenging in this fine-grained domain, underscoring the need for domain-adapted approaches. Our findings highlight the importance of combining technical textual descriptions with advanced VLMs to optimize cross-modal retrieval in industrial applications.
Similar Papers
Vision-Free Retrieval: Rethinking Multimodal Search with Textual Scene Descriptions
CV and Pattern Recognition
Finds pictures using only words, not images.
Image Recognition with Vision and Language Embeddings of VLMs
CV and Pattern Recognition
Helps computers understand pictures better with words or just sight.
A Survey on Efficient Vision-Language Models
CV and Pattern Recognition
Makes smart AI work on small, slow devices.