I have a small command recognition system in which the user first records his commands then later the system tries to recognize them . The front end's feature vector are MFCC's coefficients. The back end does recognition using DTW to align these feature vector and outputting a score ( 0 -> commands are equal). The problem with this setup is distinguishing commands (the ones which the user recorded) from other words. Picking a maximum score as threshold for which commands are recognized doesn't give good results. I looked up LDA and PCA with the purpose of projecting the recorded features to a different feature space where they could be more separable. Each recorded command is a class that has as samples feature vectors from the front-end associated with the frame of that command. From that I computed the transformation required for LDA, and applied the transformation to each set of resulting MFCC coefficients. That didn't give me a separability between recorded commands and urecorded commands.
My questions would be:
- is the approach in applying LDA the wrong one?
- are there other methods more suited for my setup (MFCC + DTW)?
Any help or guidance is greatly appreciated.