* SPOILER: ANSWER IS NOT BELOW *
Since I plan to do something similar to this, I did a little research on my own on the subject, and found out that there are some exact numeric techniques that MIGHT be able to do that.
I'll list the references, and let you as the reader decide if that's a right way to go. It all has to do with vocal audio feature extraction, and finding there vocal features ARE in audio data.
You can start here, but it really doesn't lead anywhere, but could be useful to see what are you into :)
Then, some articles about speaker recognition:
Here, there is a primer that you need to know about
mel frequency cepstral coefficients (MFCC) feature extraction.
Then, for example, this:
I know that none of them lead directly to the solution to your problem, but at least you'll be able to grasp the size of the monster that you'll be dealing with.
I use c# for something related to that, and at first I used roll-my-own fft algorithm, then moved to ILNumerics library that uses Intel math library, and later on replaced all that with fftw.
http://ilnumerics.net/ (hm, it was free at a time)
http://software.intel.com/en-us/articles/intel-mkl/ Intel Math Kernel
http://www.fftw.org/ (a simple web page, but BRUTAL performance)
EDIT: new fft engine
Since I was porting some of my code to android, I had a great working experience with a man that did something thought impossible - FFT library that is even faster than FFTW: FFTS. My understanding of his magic is limited, but he uses codelets for various processor architectures and outperforms every library there is.