Machine Learning for Motion Planning (MLMP) @ ICRA2021
Deep Neural Network-based Fast Motion Planning Framework for Quadrupedal Robot*
Deep Neural Network-based Fast Motion Planning Framework for Quadrupedal Robot*
by
Jinhyeok Jang,
Heechan Shin,
Minsung Yoon,
Seungwoo Hong,
Hae-Won Park, and
Sung-Eui Yoon
Korea Advanced Institute of Science and Technology (KAIST)
Abstract
We present a motion planning framework that
generates the motion of a quadrupedal robot in a short time
using a deep neural network. Our planner gets the initial robot
state, target goal pose, and terrain heightmap as input and
generates a trajectory of a quadrupedal robot. The planner
contains deep neural networks that extract features from
input. These features guide the planner to generate a precise
trajectory. We achieved the planning time within 230ms for 2
seconds long trajectory over various terrain types.
Contents
Paper:
PDF (5.37MB)