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Keywords
(12)
Empirical Validation
Illumination Invariance
potts model
Random Field
Robust Estimator
Robust Statistics
Shape From Shading
Shape Recovery
Singular Value Decomposition
Spatial Interaction
Spherical Harmonic
Statistical Model
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Illumination-invariant Statistical Shape Recovery with Contiguous Occlusion
Illumination-invariant Statistical Shape Recovery with Contiguous Occlusion,10.1109/CRV.2011.47,Shireen Elhabian,Ham Rara,Asem Ali,Aly Farag
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Illumination-invariant Statistical Shape Recovery with Contiguous Occlusion
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Shireen Elhabian
,
Ham Rara
,
Asem Ali
,
Aly Farag
Spherical harmonics (SH) has been an attractive fit for illumination modeling in
shape recovery
after the conclusion drawn by Basri and Jacobs (1). The main challenge is the computation of the spherical harmonics projection (SHP) images to be robust against imaging conditions other than illumination. Occlusions due to wearing apparel and makeup, or even incompliance to the requirement of the
statistical model
introduce errors in the reconstructed SHP images which in turn has a direct impact on the recovered shape. In this paper, we propose to cast errors introduced due to occlusion as: (1) statistical outliers which are determined and rejected using
robust statistics
and (2) local spatial erroneous continuous re- gions where Markov Gibbs
random field
with the homogenous isotropic
Potts model
is adopted to model the occlusion's spatial interaction. Our results show the effectiveness of the proposed algorithms in handling high levels of contiguous occlusion compared to one of the state-of-the-art statistical illumination invariant shape-from-shading (18). In particular, MGRF and robust estimation using Geman-McClure function outperform the
singular value decomposition
(SVD) performance approach which is very sensitive to the presence of occlusion even at low levels. In the meantime, the performance of Lorenztian function approaches SVD due to the presence of errors caused by basis of different identity than the shape to be reconstructed. We provide
empirical validation
of our conclusions by simulations and real experiments. Keywords-shape recovery, spherical harmonics, illumination modeling, occlusion handling, robust statistics.
Conference:
Canadian Conference on Computer and Robot Vision - CRV
, 2011
DOI:
10.1109/CRV.2011.47
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References
(26)
Lambertian Reflectance and Linear Subspaces
(
Citations: 523
)
Ronen Basri
,
David W. Jacobs
Conference:
International Conference on Computer Vision - ICCV
, pp. 383-390, 2001
Face Recognition Based on Fitting a 3D Morphable Model
(
Citations: 656
)
Volker Blanz
,
Thomas Vetter
Journal:
IEEE Transactions on Pattern Analysis and Machine Intelligence - PAMI
, vol. 25, no. 9, pp. 1063-1074, 2003
Face Synthesis and Recognition from a Single Image under Arbitrary Unknown Lighting Using a Spherical Harmonic Basis Morphable Model
(
Citations: 34
)
Lei Zhang
,
Sen Wang
,
Dimitris Samaras
Conference:
Computer Vision and Pattern Recognition - CVPR
, vol. 2, pp. 209-216, 2005
Shape from shading: A survey
(
Citations: 495
)
Ruo Zhang
,
Ping-sing Tsai
,
James Edwin Cryer
,
Mubarak Shah
Journal:
IEEE Transactions on Pattern Analysis and Machine Intelligence - PAMI
, vol. 21, no. 8, pp. 690-706, 1999
Unifying Approaches and Removing Unrealistic Assumptions in Shape from Shading: Mathematics Can Help
(
Citations: 19
)
Emmanuel Prados
,
Olivier D. Faugeras
Conference:
European Conference on Computer Vision - ECCV
, pp. 141-154, 2004