The dataset viewer is not available because its heuristics could not detect any supported data files. You can try uploading some data files, or configuring the data files location manually.

Functional Manipulation Benchmark

This robot learning dataset is a part of the paper "FMB: a Functional Manipulation Benchmark for Generalizable Robotic Learning". It includes 22,550 expert demonstration trajectories across different skills required to solve the Single-Object and Multi-Object Manipulation Tasks presented in the paper.

Link to paper: https://arxiv.org/abs/2401.08553

Link to website: https://functional-manipulation-benchmark.github.io

Dataset Structure

Each zip file contains a folder of trajectories. Each trajectory is saved as a .npy file. Each .npy file contains a dictionary with the following key-value pairs:

  • obs/side_1: a (N, 256, 256, 3) numpy array of RGB images from the side camera 1 saved in BGR format
  • obs/side_2: a (N, 256, 256, 3) numpy array of RGB images from the side camera 2 saved in BGR format
  • obs/wrist_1: a (N, 256, 256, 3) numpy array of RGB images from the wrist camera 1 saved in BGR format
  • obs/wrist_2: a (N, 256, 256, 3) numpy array of RGB images from the wrist camera 2 saved in BGR format
  • obs/side_1_depth: a (N, 256, 256) numpy array of depth images from the side camera 1
  • obs/side_2_depth: a (N, 256, 256) numpy array of depth images from the side camera 2
  • obs/wrist_1_depth: a (N, 256, 256) numpy array of depth images from the wrist camera 1
  • obs/wrist_2_depth: a (N, 256, 256) numpy array of depth images from the wrist camera 2
  • obs/tcp_pose: a (N, 7) numpy array of the end effector pose in the robot's base frame (XYZ, Quaternion)
  • obs/tcp_vel: a (N, 6) numpy array of the end effector velocity in the robot's base frame (XYZ, RPY)
  • obs/tcp_force: a (N, 3) numpy array of the end-effector force in the robot's end-effector frame (XYZ)
  • obs/tcp_torque: a (N, 3) numpy array of the end-effector torque in the robot's end-effector frame (RPY)
  • obs/q: a (N, 7) numpy array of the joint positions
  • obs/dq: a (N, 7) numpy array of the joint velocities
  • obs/jacobian: a (N, 6, 7) numpy array of the robot jacobian
  • obs/gripper_pose: a (N, ) numpy array indicating the binary state of the gripper (0=open, 1=closed)
  • action: a (N, 7) numpy array of the commanded cartesian action (XYZ, RPY, gripper)
  • primitive: a (N, ) numpy array of strings indicating the primitive associated with the current timestep
  • object_id (Multi-Object only): a (N, ) numpy array of integers indicating the ID of the object being manipulated in the current trajectory
  • object_info (Single-Object only): a dictionary containing information of the object being manipulated in the current trajectory with the following keys-value pairs:
    • length: length of the object (S=Short, L=Long)
    • size: cross-sectional size of the object (S=Small, M=Medium, L=Large)
    • shape: shape ID of the object according to reference sheet
    • color: color ID of the object according to reference sheet
    • angle: initial pose of the object indicating how it should be grasped and reoriented (horizontal, vertical)
    • distractor: indicator for whether there are distractor objects (y=yes, n=no)

File Naming

The Single-Object Dataset trajectory files are named as follows:

(insert_only_){shape}_{size}_{length}_{color}_{angle}_{distractor}_{trajectory_id}.npy

The Multi-Object Dataset trajectory files are named as follows:

trajectory_{object_id}_{trajectory_id}.npy
Downloads last month
2,905