cov mainly just adds convenience to the bare formula.
If you type
You'll see a lot of stuff, with these lines all the way at the bottom:
xc = bsxfun(@minus,x,sum(x,1)/m); % Remove mean
xy = (xc' * xc) / m;
xy = (xc' * xc) / (m-1); % DEFAULT
which is essentially the same as your first line, save for the subtraction of the column-means.
Read the wiki on sample covariances to see why there is a minus-one in the default path.
Note however that your first line uses normal transpose (
.'), whereas the
cov-version uses conjugate-transpose (
'). This will make the output of
cov different in the context of complex-valued data.
Also note that
cov is a function call to a non-built in function. That means that there will be a (possibly severe) performance penalty when using
cov in a loop; Matlab's JIT compiler cannot accelerate non-built in functions.