Sparse Pose Trajectory Completion
- URL: http://arxiv.org/abs/2105.00125v1
- Date: Sat, 1 May 2021 00:07:21 GMT
- Title: Sparse Pose Trajectory Completion
- Authors: Bo Liu, Mandar Dixit, Roland Kwitt, Gang Hua, Nuno Vasconcelos
- Abstract summary: We propose a method to learn, even using a dataset where objects appear only in sparsely sampled views.
This is achieved with a cross-modal pose trajectory transfer mechanism.
Our method is evaluated on the Pix3D and ShapeNet datasets.
- Score: 87.31270669154452
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We propose a method to learn, even using a dataset where objects appear only
in sparsely sampled views (e.g. Pix3D), the ability to synthesize a pose
trajectory for an arbitrary reference image. This is achieved with a
cross-modal pose trajectory transfer mechanism. First, a domain transfer
function is trained to predict, from an RGB image of the object, its 2D depth
map. Then, a set of image views is generated by learning to simulate object
rotation in the depth space. Finally, the generated poses are mapped from this
latent space into a set of corresponding RGB images using a learned identity
preserving transform. This results in a dense pose trajectory of the object in
image space. For each object type (e.g., a specific Ikea chair model), a 3D CAD
model is used to render a full pose trajectory of 2D depth maps. In the absence
of dense pose sampling in image space, these latent space trajectories provide
cross-modal guidance for learning. The learned pose trajectories can be
transferred to unseen examples, effectively synthesizing all object views in
image space. Our method is evaluated on the Pix3D and ShapeNet datasets, in the
setting of novel view synthesis under sparse pose supervision, demonstrating
substantial improvements over recent art.
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