Unfortunately I could not make it to the last probability theory lecture and now I am reading through the notes and have some troubles understanding what is going on.
So we defined Brownian motion as a stochastic process on $[0,\infty)$ such that
1.) $t \mapsto X_t(\omega)$ is a.s. continuous 2.) $X_t$ has stationary $X_{t_i}-X_{t_{i-1}} \sim N(0,t_i-t_{i-1})$ and independent increments where $X_t \sim N(0,t).$
Now, we are following the book "Continuous Time Markov Processes" and I refer to the beginning of Chapter 1.7.
It says: It is most convenient in the case of Brownian motion to take the probability space $\Omega$ to be the space $C[0,\infty)$ of all continuous functions $\omega(.)$ on $[0,\infty).$ This choice is natural because Brownian paths are continuous. The process is defined by $X(t,\omega) = \omega(t).$
The $\sigma$- algebra $F$ is taken to be the smallest one for which the projection $\omega \mapsto \omega(t)$ is measurable for each $t$. Rather than having one probability measue on $(\Omega,F)$ we now have a family $(P^x)$ of probability measures indexed by $x \in \mathbb{R}$. The probability measure is the distribution of $x+B(.),$ where $B$ is standard Brownian motion.
This is all a little bit confusing to me. So far I regarded Brownian motion as a map $X: \Omega \rightarrow \big(C[0,\infty), B(C[0,\infty))\big)$ where $B$ is the Borel sigma algebra on $C[0,\infty)$ and $\Omega$ was a space that I did not really care about.
But now they seem to be changing $\Omega$ which is fairly bizarre to me. Does anybody understand what they want to do and from where to where (in particular equipped with which sigma algebra and measures) they want the brownian motion to go? As it could still be that they want to denote something different with omega, I wanted to ask the experts here.