This paper presents an approach to terrain shape detection using an array of tactile sensors
or motor torque and encoders. A sparse point cloud at points where the surface is touched by the
robot’s feet is converted into a polygonal mesh and a dense 3D point cloud using α-shapes derived
from a 2D Delaunay triangulation. Cloud-to-Cloud (C2C) and Cloud-to-Mesh (C2M) metrics are
used to validate the solution. In the study, a mathematical model of the robot-surface system is
developed and numerical experiments are performed on the basis of this model. A modification
of Delaunay triangulation is proposed to account for impassable or unexplored areas of the
surface. The results of mathematical modeling are confirmed in hardware experiments.
Keywords:
tactile sensing, legged robots, identification of terrain properties, alpha shapes, mathematical modeling, simulation
Citation:
Bulichev O. V., Maloletov A. V., Surface Shape Identification with Legged Robots Using Tactile Sensing, Rus. J. Nonlin. Dyn.,
2024, Vol. 20, no. 5,
pp. 747-757
DOI:10.20537/nd241208