Poster
in
Workshop: Workshop on robustness of zero/few-shot learning in foundation models (R0-FoMo)
Image Clustering Conditioned on Text Criteria
Sehyun Kwon · Jaeseung Park · Minkyu Kim · Jaewoong Cho · Ernest Ryu · Kangwook Lee
Abstract:
Classical clustering methods do not provide users with direct control of the clustering results, and the clustering results may not be consistent with the relevant criterion that a user has in mind. In this work, we present a new methodology for performing image clustering based on user-specified criteria in the form of text by leveraging modern Vision-Language Models and Large Language Models. We call our method Image Clustering Conditioned on Text Criteria (IC$|$TC), and it represents a different paradigm of image clustering. IC$|$TC requires a minimal and practical degree of human intervention and grants the user significant control over the clustering results in return. Our experiments show that IC$|$TC can effectively cluster images with various criteria, such as human action, physical location, or the person's mood, while significantly outperforming baselines.
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