Explicit Recursive and Adaptive Filtering in Reproducing Kernel Hilbert Spaces
Title | Explicit Recursive and Adaptive Filtering in Reproducing Kernel Hilbert Spaces |
Publication Type | Journal Article |
Year of Publication | 2014 |
Authors | Tuia, D., Munoz-Mari, J., Rojo-Alvarez, J.L., Martinez-Ramon, M., Camps-Valls, G. |
Journal | Neural Networks and Learning Systems, IEEE Transactions on |
Volume | 25 |
Pagination | 1413-1419 |
Date Published | July |
ISSN | 2162-237X |
Keywords | Adaptation models, Adaptive, adaptive antenna array processing, adaptive filtering, adaptive filters, autoregressive and moving-average, chaotic time series prediction, complex nonlinear system identification, controlled stability, electroencephalographic time series prediction, filter, functional analysis, Hilbert space, Hilbert spaces, IIR filters, infinite impulse response filter, Kernel, kernel Hilbert spaces, kernel methods, Mathematical model, memory depth, recursive, recursive filtering, recursive filters, recursive., stability, time series, Time series analysis, Training, Vectors |
Abstract | This brief presents a methodology to develop recursive filters in reproducing kernel Hilbert spaces. Unlike previous approaches that exploit the kernel trick on filtered and then mapped samples, we explicitly define the model recursivity in the Hilbert space. For that, we exploit some properties of functional analysis and recursive computation of dot products without the need of preimaging or a training dataset. We illustrate the feasibility of the methodology in the particular case of the g-filter, which is an infinite impulse response filter with controlled stability and memory depth. Different algorithmic formulations emerge from the signal model. Experiments in chaotic and electroencephalographic time series prediction, complex nonlinear system identification, and adaptive antenna array processing demonstrate the potential of the approach for scenarios where recursivity and nonlinearity have to be readily combined. |
URL | http://ieeexplore.ieee.org/document/6722955/?reload=true |
DOI | 10.1109/TNNLS.2013.2293871 |
Citation Key | 6722955 |
- infinite impulse response filter
- Vectors
- Training
- Time series analysis
- time series
- stability
- recursive.
- recursive filters
- recursive filtering
- recursive
- memory depth
- Mathematical model
- kernel methods
- kernel Hilbert spaces
- Kernel
- Adaptation models
- IIR filters
- Hilbert spaces
- Hilbert space
- functional analysis
- filter
- electroencephalographic time series prediction
- controlled stability
- complex nonlinear system identification
- chaotic time series prediction
- autoregressive and moving-average
- adaptive filters
- adaptive filtering
- adaptive antenna array processing
- adaptive