Title :
Maximum Entropy PDF Design Using Feature Density Constraints: Applications in Signal Processing
Author :
Baggenstoss, Paul M.
Author_Institution :
Naval Undersea Warfare Center, Newport, RI, USA
Abstract :
This paper revisits an existing method of constructing high-dimensional probability density functions (PDFs) based on the PDF at the output of a dimension-reducing feature transformation. We show how to modify the method so that it can provide the PDF with the highest entropy among all PDFs that generate the given low-dimensional PDF. The method is completely general and applies to arbitrary feature transformations. The chain-rule is described for multi-stage feature calculations typically used in signal processing. Examples are given including MFCC and auto-regressive features. Experimental verification of the results using simulated data is provided including a comparison with competing generative methods.
Keywords :
probability; signal processing; MFCC; auto-regressive features; dimension-reducing feature transformation; feature density constraints; high-dimensional probability density functions; maximum entropy PDF design; signal processing; Entropy; Estimation; Government; Kernel; Materials; Probability density function; Signal processing; Maximum entropy; PDF estimation; statistical distributions; statistical learning;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2015.2419189