SOTAVerified

Image-guided topic modeling for interpretable privacy classification

2024-09-27Code Available0· sign in to hype

Alina Elena Baia, Andrea Cavallaro

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Predicting and explaining the private information contained in an image in human-understandable terms is a complex and contextual task. This task is challenging even for large language models. To facilitate the understanding of privacy decisions, we propose to predict image privacy based on a set of natural language content descriptors. These content descriptors are associated with privacy scores that reflect how people perceive image content. We generate descriptors with our novel Image-guided Topic Modeling (ITM) approach. ITM leverages, via multimodality alignment, both vision information and image textual descriptions from a vision language model. We use the ITM-generated descriptors to learn a privacy predictor, PrivITM, whose decisions are interpretable by design. Our PrivITM classifier outperforms the reference interpretable method by 5 percentage points in accuracy and performs comparably to the current non-interpretable state-of-the-art model.

Tasks

Reproductions