Statistical properties of the output

of a finite time integrator are discussed. The input process considered is a binary random process

having successive axis-crossing intervals which are statistically independent. Transform expressions are derived for the first- and second-order transition probability densities of the integrated process, and it is shown how these results may be extended to three or more dimensions. Four processes are considered as examples. The integrated process

is shown to be a projection of a Markov process in three dimensions. The other two components are the original binary process

, and an "associated ramp process"

. Various statistical properties of this ramp process are considered and it is shown that

is Markovian in one dimension. The first-order probability density and the transition probability density are discussed. Also, the transition probability density for the joint process
![[x(t), y(t), z(t)]](/images/tex/11599.gif)
is given. Finally, in Appendix II, results are given for the first passage and recurrence time probability densities of

, together with a relation between these two density functions.