Search Results for author: Peter Florence

Found 3 papers, 2 papers with code

Self-Supervised Correspondence in Visuomotor Policy Learning

1 code implementation16 Sep 2019 Peter Florence, Lucas Manuelli, Russ Tedrake

In this paper we explore using self-supervised correspondence for improving the generalization performance and sample efficiency of visuomotor policy learning.

Imitation Learning

kPAM: KeyPoint Affordances for Category-Level Robotic Manipulation

no code implementations15 Mar 2019 Lucas Manuelli, Wei Gao, Peter Florence, Russ Tedrake

However, representing an object with a parameterized transformation defined on a fixed template cannot capture large intra-category shape variation, and specifying a target pose at a category level can be physically infeasible or fail to accomplish the task -- e. g. knowing the pose and size of a coffee mug relative to some canonical mug is not sufficient to successfully hang it on a rack by its handle.

Robotics

DeepSDF: Learning Continuous Signed Distance Functions for Shape Representation

4 code implementations CVPR 2019 Jeong Joon Park, Peter Florence, Julian Straub, Richard Newcombe, Steven Lovegrove

In this work, we introduce DeepSDF, a learned continuous Signed Distance Function (SDF) representation of a class of shapes that enables high quality shape representation, interpolation and completion from partial and noisy 3D input data.

3D Reconstruction 3D Shape Representation

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