) only
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Although
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yy for im-
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a b
Cc
Figure 5: Results: a) Disparity map in epipolar resampled image (white holes: not enough texture to match). b) and c) synthesized views
a b
a b
Figure 7: Results: a) Disparity map in epipolar resampled image (white holes: not enough texture to match). b) to d) synthesized views
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