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arxiv 2203.16531 v1 pith:ALNZUQLZ submitted 2022-03-30 cs.CV

Understanding 3D Object Articulation in Internet Videos

classification cs.CV
keywords videosapproacharticulationdatasetinternetproblemproposesystem
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose to investigate detecting and characterizing the 3D planar articulation of objects from ordinary videos. While seemingly easy for humans, this problem poses many challenges for computers. We propose to approach this problem by combining a top-down detection system that finds planes that can be articulated along with an optimization approach that solves for a 3D plane that can explain a sequence of observed articulations. We show that this system can be trained on a combination of videos and 3D scan datasets. When tested on a dataset of challenging Internet videos and the Charades dataset, our approach obtains strong performance. Project site: https://jasonqsy.github.io/Articulation3D

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