I am having some trouble getting pointers to how to perform what appears to be a deceptively easy task:
Given an audio stream, how do you count the number of words that have been spoken, in real-time?
I don't need to recognize what the words are, but rather just have an accurate counter on words that have been uttered. The counter doesn't have to be too accurate and could even consider utterances and other "grunts" like coughs.
It appears that all Speech Recognition systems depend on a pre-defined grammar to be provided before they can analyze the phonemes that are spoken to convert to known words with some degree of accuracy. But I don't care about the accuracy at all, but rather the rate of words being spoken.
What is important is that this runs in real time, and allow the system to provide alerts after a certain number of words have been spoken. The system will encourage a visual cue to pause, and then the speaker can continue.
I've looked at CMU Sphinx FAQ and found that the idea of "word spotting" is not yet supported. I don't really need a real time search of particular words, but it approximates more closely to what I am looking for. Looking for very small silences in the waveform seems to be a very crude way of doing this and probably not very accurate at all, but that's all I have right now.
Any pointers on algorithms, research papers or any other insights would be appreciated!