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Main Authors: Lülf, Christian, Martins, Denis Mayr Lima, Salles, Marcos Antonio Vaz, Zhou, Yongluan, Gieseke, Fabian
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.13322
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author Lülf, Christian
Martins, Denis Mayr Lima
Salles, Marcos Antonio Vaz
Zhou, Yongluan
Gieseke, Fabian
author_facet Lülf, Christian
Martins, Denis Mayr Lima
Salles, Marcos Antonio Vaz
Zhou, Yongluan
Gieseke, Fabian
contents The advent of text-image models, most notably CLIP, has significantly transformed the landscape of information retrieval. These models enable the fusion of various modalities, such as text and images. One significant outcome of CLIP is its capability to allow users to search for images using text as a query, as well as vice versa. This is achieved via a joint embedding of images and text data that can, for instance, be used to search for similar items. Despite efficient query processing techniques such as approximate nearest neighbor search, the results may lack precision and completeness. We introduce CLIP-Branches, a novel text-image search engine built upon the CLIP architecture. Our approach enhances traditional text-image search engines by incorporating an interactive fine-tuning phase, which allows the user to further concretize the search query by iteratively defining positive and negative examples. Our framework involves training a classification model given the additional user feedback and essentially outputs all positively classified instances of the entire data catalog. By building upon recent techniques, this inference phase, however, is not implemented by scanning the entire data catalog, but by employing efficient index structures pre-built for the data. Our results show that the fine-tuned results can improve the initial search outputs in terms of relevance and accuracy while maintaining swift response times
format Preprint
id arxiv_https___arxiv_org_abs_2406_13322
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CLIP-Branches: Interactive Fine-Tuning for Text-Image Retrieval
Lülf, Christian
Martins, Denis Mayr Lima
Salles, Marcos Antonio Vaz
Zhou, Yongluan
Gieseke, Fabian
Information Retrieval
The advent of text-image models, most notably CLIP, has significantly transformed the landscape of information retrieval. These models enable the fusion of various modalities, such as text and images. One significant outcome of CLIP is its capability to allow users to search for images using text as a query, as well as vice versa. This is achieved via a joint embedding of images and text data that can, for instance, be used to search for similar items. Despite efficient query processing techniques such as approximate nearest neighbor search, the results may lack precision and completeness. We introduce CLIP-Branches, a novel text-image search engine built upon the CLIP architecture. Our approach enhances traditional text-image search engines by incorporating an interactive fine-tuning phase, which allows the user to further concretize the search query by iteratively defining positive and negative examples. Our framework involves training a classification model given the additional user feedback and essentially outputs all positively classified instances of the entire data catalog. By building upon recent techniques, this inference phase, however, is not implemented by scanning the entire data catalog, but by employing efficient index structures pre-built for the data. Our results show that the fine-tuned results can improve the initial search outputs in terms of relevance and accuracy while maintaining swift response times
title CLIP-Branches: Interactive Fine-Tuning for Text-Image Retrieval
topic Information Retrieval
url https://arxiv.org/abs/2406.13322