Scenes with cast shadows can produce complex sets of
images. These images cannot be well approximated by lowdimensional
linear subspaces. However, in this paper we
show that the set of images produced by a Lambertian scene
with cast shadows can be efficiently represented by a sparse
set of images generated by directional light sources. We first
model an image with cast shadows as composed of a diffusive
part (without cast shadows) and a residual part that
captures cast shadows. Then, we express the problem in an
`1-regularized least squares formulation, with nonnegativity
constraints. This sparse representation enjoys an effective
and fast solution, thanks to recent advances in compressive
sensing. In experiments on both synthetic and real data,
our approach performs favorably in comparison to several
previously proposed methods.
Xue Mei, Haibin Ling, David W. Jacobs