Reconstructing PASCAL VOC

@article{Vicente2014ReconstructingPV,
  title={Reconstructing PASCAL VOC},
  author={Sara Vicente and Jo{\~a}o Carreira and Lourdes Agapito and Jorge Batista},
  journal={2014 IEEE Conference on Computer Vision and Pattern Recognition},
  year={2014},
  pages={41-48}
}
We address the problem of populating object category detection datasets with dense, per-object 3D reconstructions, bootstrapped from class labels, ground truth figure-ground segmentations and a small set of keypoint annotations. Our proposed algorithm first estimates camera viewpoint using rigid structure-from-motion, then reconstructs object shapes by optimizing over visual hull proposals guided by loose within-class shape similarity assumptions. The visual hull sampling process attempts to… CONTINUE READING

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