Abstract
We introduce a variational framework for separating shading and reflectance from a series of images acquired under different angles, when the geometry has already been estimated by multi-view stereo. Our formulation uses an \(l^1\)-TV variational framework, where a robust photometric-based data term enforces adequation to the images, total variation ensures piecewise-smoothness of the reflectance, and an additional multi-view consistency term is introduced for resolving the arising ambiguities. Optimisation is carried out using an alternating optimisation strategy building upon iteratively reweighted least-squares. Preliminary results on both a synthetic dataset, using various lighting and reflectance scenarios, and a real dataset, confirm the potential of the proposed approach.
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Notes
- 1.
This model is valid for greyscale images. To handle RGB images, our approach can be applied independently to each color channel.
- 2.
In order to compare comparable things, we scale the estimated albedos in each part, so that its median is equal to the associated ground truth value.
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Mélou, J., Quéau, Y., Durou, JD., Castan, F., Cremers, D. (2017). Beyond Multi-view Stereo: Shading-Reflectance Decomposition. In: Lauze, F., Dong, Y., Dahl, A. (eds) Scale Space and Variational Methods in Computer Vision. SSVM 2017. Lecture Notes in Computer Science(), vol 10302. Springer, Cham. https://doi.org/10.1007/978-3-319-58771-4_55
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