This forum thread has a good answer (about three down) - http://www.dsprelated.com/showmessage/103820/1.php.
The trick is to get the decoded audio from the mp3 - if they're just short 'hello' sounds, I'd store them inside the app as a wav instead of decoding them (though I've never used CoreAudio or any of the other frameworks before so mp3 decoding into memory might be easy).
When you've got your reference wav and your recorded wav, follow the steps in the post above :
1 Do whatever is necessary to convert .wav files to their discrete- time
2 time-warping might or might not be necessary depending on difference
between two sample rates:
3 After time warping, truncate both signals so that their durations are
4 Compute normalized energy spectral density (ESD) from DFT's two signals:
6 Compute mean-square-error (MSE) between normalized ESD's of two
The MSE between the normalized ESD's
of two signals is good metric of
closeness. If you have say, 10 .wav
files, and 2 of them are nearly the
same, but the others are not, the two
that are close should have a
relatively low MSE. Two perfectly
identical signals will obviously have
MSE of zero. Ideally, two "equivalent"
signals with different time scales,
(20-second human talking versus
5-second chipmunk), different energies
(soft-spoken human verus yelling
chipmunk), and different phases
(sampling began at slightly different
instant against continuous time
input); should still have MSE of zero,
but quantization errors inherent in
DSP will yield MSE slightly greater
You should get two different MSE values, one between your male->recorded track and one between your female->recorded track. The comparison with the lowest difference is probably the correct gender.
I confess that I've never tried to do this and it looks very hard - good luck!