The problem you describe is not simple since the voice of the same person can sound different (for example if the person has a cold etc.) and/or if the person is speaking louder/faster/slower etc.
Another point is the separation from other sounds (background, other voices etc.).
The quality of the equipment which records the sound is very important - some systems use multiple microphones to achieve good results...
Altogether this is no easy task - esp. if you want to achieve a good detection ratio.
Basically the way to implement this is:
- implement robust sound separation
- implement a robust sound/voice pattern extraction
- create a DB with fingerprint(s) of the voice(s) you want to recognize based on ideal sound setting
- define an algorithm for comparison between your stored fingerprint(s) and the extracted/normalized sound/voice pattern (have some thresholds for "probably equal" etc. might be necessary...)
- refine your algorithms till you achieve an acceptable detection rate (take the false positive rate into account too!)
For a nice overview see http://www.scholarpedia.org/article/Speaker_recognition