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A Batch Algorithm For Implicit Non-Rigid Shape and Motion Recovery

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Academic year: 2021

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Figure 1: Reprojection and generalization error versus the variance of added noise σ for different percentages γ of  hid-den points to compute the generalization error.
Figure 4: One frame with points and motion vectors repro- repro-jected from the reconstructed model.
Figure 3: (top) 5 out of the 154 frames and (bottom) the visibility matrix V for the ‘Groundhog Day’ sequence.

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