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RenDetNet: Weakly-supervised Shadow Detection with Shadow Caster Verification

Authors :
Kubiak, Nikolina
Wortman, Elliot
Mustafa, Armin
Phillipson, Graeme
Jolly, Stephen
Hadfield, Simon
Publication Year :
2024

Abstract

Existing shadow detection models struggle to differentiate dark image areas from shadows. In this paper, we tackle this issue by verifying that all detected shadows are real, i.e. they have paired shadow casters. We perform this step in a physically-accurate manner by differentiably re-rendering the scene and observing the changes stemming from carving out estimated shadow casters. Thanks to this approach, the RenDetNet proposed in this paper is the first learning-based shadow detection model whose supervisory signals can be computed in a self-supervised manner. The developed system compares favourably against recent models trained on our data. As part of this publication, we release our code on github.<br />Comment: AIM @ ECCV 2024 / code available at https://github.com/n-kubiak/RenDetNet

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.17143
Document Type :
Working Paper