Article ID Journal Published Year Pages File Type
428465 Information Processing Letters 2006 7 Pages PDF
Abstract

The optimal path planning problems are very difficult in the case where the cost metric varies not only in different regions of the space, but also in different directions inside the same region. If the classic discretization approach is adopted to compute an ɛ-approximation of the optimal path, the size of the discretization (and thus the complexity of the approximation algorithm) is usually dictated by a number of geometric parameters and thus can be very large. In this paper we show a general method for choosing the variables of the discretization to maximally reduce the dependency of the size of the discretization on various geometric parameters. We use this method to improve the previously reported results on two optimal path problems with direction-dependent cost metrics.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics