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📄 Abstract
Abstract: Decomposing an image into its intrinsic photometric factors--shading and
reflectance--is a long-standing challenge due to the lack of extensive
ground-truth data for real-world scenes. Recent methods rely on synthetic data
or sparse annotations for limited indoor and even fewer outdoor scenes. We
introduce a novel training-free approach for intrinsic image decomposition
using only a pair of visible and thermal images. We leverage the principle that
light not reflected from an opaque surface is absorbed and detected as heat by
a thermal camera. This allows us to relate the ordinalities between visible and
thermal image intensities to the ordinalities of shading and reflectance, which
can densely self-supervise an optimizing neural network to recover shading and
reflectance. We perform quantitative evaluations with known reflectance and
shading under natural and artificial lighting, and qualitative experiments
across diverse outdoor scenes. The results demonstrate superior performance
over recent learning-based models and point toward a scalable path to curating
real-world ordinal supervision, previously infeasible via manual labeling.