Title :
Binary filter estimation for large windows
Author :
Dougherty, Edward R.
Author_Institution :
Center for Appl. Technol., Texas A&M Univ., USA
Abstract :
Optimal filters are characterized by parameters based on image and filter structure and these parameters need to be estimated from realizations. For fully optimal mean-absolute-error binary filters, conditional expectations need to be estimated. Owing to lack of estimation precision, the resulting estimated filter is likely to be suboptimal. The estimation dilemma can be mitigated by using a constrained filter requiring less parameters. This paper examines the relationship between estimation precision and constraint. It focuses on binary filters, relevant Chebyshev bounds, and the relationships between the kernels of optimal, constrained, and estimated filters. It describes constraint via iterative design and secondarily constrained filters, as well as using suboptimal filters as prior filters for the estimation of optimal filters using new data
Keywords :
filtering theory; parameter estimation; probability; Chebyshev bounds; binary filter estimation; constrained filter; constrained filters; constraint design; estimated filters; estimation precision; iterative design; large windows; optimal mean-absolute-error binary filters; probability; secondarily constrained filters; suboptimal filters; Chebyshev approximation; Digital filters; Filtering; Kernel; Optimized production technology; Quantization; Radio access networks; Random variables; Reactive power; Writing;
Conference_Titel :
Computer Graphics, Image Processing, and Vision, 1998. Proceedings. SIBGRAPI '98. International Symposium on
Conference_Location :
Rio de Janeiro
Print_ISBN :
0-8186-9215-4
DOI :
10.1109/SIBGRA.1998.722728