Text-Guided Alternative Image Clustering

ArXiv

Abstract

Traditional image clustering techniques only find a single grouping within visual data. In particular, they do not provide a possibility to explicitly define multiple types of clustering. This work explores the potential of large vision-language models to facilitate alternative image clustering. We propose Text-Guided Alternative Image Consensus Clustering (TGAICC), a novel approach that leverages user-specified interests via prompts to guide the discovery of diverse clusterings. To achieve this, it generates a clustering for each prompt, groups them using hierarchical clustering, and then aggregates them using consensus clustering. TGAICC outperforms image- and text-based baselines on four alternative image clustering benchmark datasets. Furthermore, using count-based word statistics, we are able to obtain text-based explanations of the alternative clusterings. In conclusion, our research illustrates how contemporary large vision-language models can transform explanatory data analysis, enabling the generation of insightful, customizable, and diverse image clusterings.

Type
Publication
In Proceedings of the 9th Workshop on Representation Learning for NLP (RepL4NLP-2024)
Andreas Stephan
Andreas Stephan
PhD student in Natural Language Processing

My research interests include weak supervision, multi-modality and in general the integration of multiple (noisy) sources of information.