Tracking Ensemble Performance on Touch-Screens with Gesture Classification and Transition Matrices
- Charles Martin, Research School of Computer Science, ANU
- Henry Gardner, Research School of Computer Science, ANU
- Ben Swift, Research School of Computer Science, ANU
- We present and evaluate a novel interface for tracking ensemble performances on touch-screens. The system uses a Random Forest classifier to extract touch-screen gestures and transition matrix statistics. It analyses the resulting gesture-state sequences across an ensemble of performers. A series of specially designed iPad apps respond to this real-time analysis of free-form gestural performances with calculated modifications to their musical interfaces. We describe our system and evaluate it through cross-validation and profiling as well as concert experience.
Return to the previous page.