There are a number of problems with the way you've tried to impliment this. First, it helps to make the example reproducible:

```
original.matrix <- matrix(1:(320*25), nrow=320, ncol=25)
```

Second, if you are going to use a for-loop, you need to initialize an object to hold the results:

```
helping.matrix <- matrix(nrow=64, ncol=25)
```

OK, now let's take a look at your code.

```
for (x in c(1:64)){
helping.matrix[x,] = colSums(original.matrix[((5*(x-1)+1):5*x),])/
```

The indexing expression here is pretty wild, and does not do what you want it to. For example, when x = 2, `(5*(x-1)+1):5*x`

= 12, 10. That doesn't match with your stated goal. at x = 9 the expression returns values greater than the number of rows in original.matrix, which is why you get the "out of bounds" error. The next problem occures when we get to

```
vector[((5*(x-1)+1):5*x)])
```

Here you are trying to index `vector`

as though it were a data object. But vector is not a data object, it is a function. Maybe you want `c((5*(x-1)+1):5*x)`

? Anyway it's not clear from your question exactly what this secton of code is intended to do, so I can't really offer much in the way of suggestions here.

OK, so let's make a fresh start. The way I would approach this problem is by making an index vector that maps on the the groups you want to apply your summing function to:

```
groups <- rep(1:(320/5), each=5)
```

Next, use a loop or an apply-family function to iterate over the groups. The for-loop approach would look something like

```
helping.matrix <- matrix(nrow=64, ncol=25)
for(i in unique(groups)) {
helping.matrix[i,] <- colSums(original.matrix[groups == i,])
}
```

and the apply-based approach would look like

```
helping.matrix <- Reduce(rbind, by(original.matrix, groups, colSums))
```

I've left out the part that is supposed to "normalized by a certain vector" because it's not clear to me what is actually supposed to happen there.