Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6952873 | Journal of the Franklin Institute | 2018 | 43 Pages |
Abstract
In this paper we develop a new framework for time series segmentation based on a Hierarchical Linear Dynamical System (HLDS), and test its performance on monophonic and polyphonic musical note recognition. The center piece of our approach is the inclusion of constraints in the filter topology, instead of on the cost function as normally done in machine learning. Just by slowing down the dynamics of the top layer of an augmented (multilayer) state model, which is still compatible with the recursive update equation proposed originally by Kalman, the system learns directly from data all the musical notes, without labels, effectively creating a time series clustering algorithm that does not require segmentation. We analyze the HLDS properties and show that it provides better classification accuracy compared to current state-of-the-art approaches.
Related Topics
Physical Sciences and Engineering
Computer Science
Signal Processing
Authors
Goktug T. Cinar, Pedro M.N. Sequeira, Jose C. Principe,