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Category-Level Articulated Object Pose Estimation

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arxiv 1912.11913 v2 pith:RCYCZVMV submitted 2019-12-26 cs.CV cs.AIcs.RO

Category-Level Articulated Object Pose Estimation

classification cs.CV cs.AIcs.RO
keywords canonicalobjectspacepartposearticulatedcategory-levelestimation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This project addresses the task of category-level pose estimation for articulated objects from a single depth image. We present a novel category-level approach that correctly accommodates object instances previously unseen during training. We introduce Articulation-aware Normalized Coordinate Space Hierarchy (ANCSH) - a canonical representation for different articulated objects in a given category. As the key to achieve intra-category generalization, the representation constructs a canonical object space as well as a set of canonical part spaces. The canonical object space normalizes the object orientation,scales and articulations (e.g. joint parameters and states) while each canonical part space further normalizes its part pose and scale. We develop a deep network based on PointNet++ that predicts ANCSH from a single depth point cloud, including part segmentation, normalized coordinates, and joint parameters in the canonical object space. By leveraging the canonicalized joints, we demonstrate: 1) improved performance in part pose and scale estimations using the induced kinematic constraints from joints; 2) high accuracy for joint parameter estimation in camera space.

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