학술논문

Multirate Kalman filtering approach for optimal two-dimensional signal reconstruction from noisy subband systems
Document Type
Conference
Source
Proceedings of International Conference on Image Processing Image processing Image Processing, 1997. Proceedings., International Conference on. 1:157-160 vol.1 1997
Subject
Signal Processing and Analysis
Computing and Processing
Kalman filters
Filtering
Filter bank
Additive noise
Signal synthesis
Quantization
Signal reconstruction
State estimation
Power system modeling
Computer simulation
Language
Abstract
Conventional synthesis filters in subband systems lose their optimality when additive noise due, for example, to signal quantization, disturbs the subband components. The multichannel representation of the subband signal is combined with the statistical model of the input signal to derive the multirate state-space model for a filter bank system with additive noise. Thus the signal reconstruction problem in the subband system can be formulated as the process of optimal state estimation in the equivalent multirate state-space model. With the input signal embedded in the state vector, the multirate Kalman filtering provides the minimum-variance reconstruction of the input signal. Using the powerful Kronecker product notation, the results and derivations can then be extended to the 2-D cases. Incorporated with the vector dynamical model, the 2-D multirate state-space model for 2-D Kalman filtering is developed. Computer simulation with the proposed 2-D multirate Kalman filter gives favorable results.