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Motion planning for parabolic equations using flatness and finite-difference a...
The dataset is used for motion planning for parabolic equations using flatness and finite-difference approximations. -
Object Rearrangement Using Learned Implicit Collision Functions
A learned collision checking model that dramatically increases collision checking speeds between point clouds for motion planning in real-world rearrangement tasks. -
Pholus Robot Configurations
The dataset used for the experiments in the paper is a collection of robot configurations for the Pholus robot. -
Constraint Satisfying Robot Configurations
The dataset used for the experiments in the paper is a collection of constraint-satisfying robot configurations. -
DeepSMP Training and Testing Dataset
A dataset of 100 workspaces for training and 10 workspaces for testing, with 200 unseen start and goal configurations in each workspace. -
DeepSMP Dataset
A dataset of 110 different workspaces for motion planning, including simple 2D (s2D), complex 2D (c2D), complex 3D (c3D), and rigid-body (rigid) environments. -
Two-Player Highway Game
A structured VAE for generative Bayesian inverse games. The dataset is used to train the VAE and to evaluate the performance of the proposed approach. -
Two-Player Intersection Game
A structured VAE for generative Bayesian inverse games. The dataset is used to train the VAE and to evaluate the performance of the proposed approach. -
EDMP dataset
The EDMP dataset is not explicitly mentioned in the paper, but it is used as a benchmark for the proposed EDMP algorithm. -
MπNets dataset
The MπNets dataset consists of 6.54 million collision-free trajectories generated on various scenes (such as tabletop, dresser, and cubby) using two different classical planning... -
ClearanceNet Training Dataset
The dataset is used to train the ClearanceNet model. It contains 106 training and 104 evaluation samples for each environment. -
Neural Collision Clearance Estimator for Batched Motion Planning
ClearanceNet is a neural network that estimates minimum separation distance, conditioned on joint robot-workspace pose. ClearanceNet is trained using large-scale hyperparameter...