학술논문

Linear Program Differentiation for Single-Channel Speech Separation
Document Type
Conference
Source
2006 16th IEEE Signal Processing Society Workshop on Machine Learning for Signal Processing Machine Learning for Signal Processing, 2006. Proceedings of the 2006 16th IEEE Signal Processing Society Workshop on. :421-426 Sep, 2006
Subject
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Dictionaries
Signal processing algorithms
Linear programming
Equations
Speech enhancement
Vectors
Gradient methods
Informatics
Mathematical model
Sparse matrices
Language
ISSN
1551-2541
2378-928X
Abstract
Many apparently difficult problems can be solved by reduction to linear programming. Such problems are often subproblems within larger systems. When gradient optimisation of the entire larger system is desired, it is necessary to propagate gradients through the internally-invoked LP solver. For instance, when an intermediate quantity z is the solution to a linear program involving constraint matrix A, a vector of sensitivities dE/dz will induce sensitivities dE/dA. Here we show how these can be efficiently calculated, when they exist. This allows algorithmic differentiation to be applied to algorithms that invoke linear programming solvers as subroutines, as is common when using sparse representations in signal processing. Here we apply it to gradient optimisation of overcomplete dictionaries for maximally sparse representations of a speech corpus. The dictionaries are employed in a single-channel speech separation task, leading to 5 dB and 8 dB target-to-interference ratio improvements for same-gender and opposite-gender mixtures, respectively. Furthermore, the dictionaries are successfully applied to a speaker identification task.