Occupancy mapping has been widely utilized to represent the surroundings for
autonomous robots to perform tasks such as navigation and manipulation. While
occupancy mapping in 2-D environments has been well-studied, there have been
few approaches suitable for 3-D dynamic occupancy mapping which is essential
for aerial robots. This paper presents a novel 3-D dynamic occupancy mapping
algorithm called DSK3DOM. We first establish a Bayesian method to sequentially
update occupancy maps for a stream of measurements based on the random finite
set theory. Then, we approximate it with particles in the Dempster-Shafer
domain to enable real time computation. Moreover, the algorithm applies kernel
based inference with Dirichlet basic belief assignment to enable dense mapping
from sparse measurements. The efficacy of the proposed algorithm is
demonstrated through simulations and real experiments.Comment: 7 pages, 2 figures, submitted to ICRA 202