This is an incomplete implementation of the Vector Field Histogram algorithm, developed by J. Borenstein and Y. Koren in 1990. Recently I got some motivation to study robotics once again and decided it was time to finally "finish" this code.
I originally used this library in a project for my real-time systems class at Embry-Riddle Aeronautical University when I was studying in the US.
Eventually, I'll add support to the VFH+ and VFH-star algorithms.
Building the software should be as easy as:
git clone https://github.com/agarie/vector-field-histogram.git
cd vector-field-histogram
make
I'm not working on using autotools for the moment (I need to learn how to use
it, to be honest...). For now, it's possible to compile a program with the
object file vfh.o
. The example create_histogram_grid
(see Makefile) does
exactly that.
The VFH algorithm receives as inputs an array of rangefinder sensor readings and generates control signals -- the "best" direction and a damping factor for the max velocity of the robot.
The sensor readings are mapped into the Histogram Grid, a large matrix in which
each cell corresponds to an obstacle density in that area. Sonars and laser
rangefinders return a direction and a distance, so there must be a conversion
from polar to rectangular coordinates before processing them. The
correspondence between real world coordinates (i.e. (x, y)
) and grid
coordinates (i.e. (i, j)
) is given by a resolution
parameter, which is the
size of the cells, such that (x, y)
is in cell (i, j)
if x is in [i *
resolution, (i + 1) * resolution] and j is in [j * resolution, (j + 1) *
resolution]. Each reading in a cell increases that cell's density by 1.
With the histogram grid in place, actual path planning can begin. A square
moving window centered around the robot is picked and each of its cells is
mapped to (m_ij, beta_ij); m
is a function of the obstacle density of the
cell and its distance to the robot, and beta
is the angular position of the
cell. The polar histogram separates the cells in n = 360/alpha
sectors. Each
sector k has value M_k = sum(m_ij for (i, j) in sector_k). The moving window is
used to avoid computing on all cells (the histogram grid can be huge) and
because cells too far away probably won't contribute much to local planning.
A threshold is applied to the polar histogram, selecting only the sectors with obstacle density low enough for safe passage. Finally, the sector with the direction best matching the objective's is followed. The max velocity S_max is decreased depending on the density of the chosen sector and the current angular velocity.
Copyright (c) 2012-2016 Carlos Agarie. See LICENSE for details.