Precision of morphological-representation estimators for translation-invariant binary filters: Increasing and nonincreasing Academic Article uri icon

abstract

  • Mean-absolute-error-optimal, finite-observation, translations, invariant, binary-image filters have previously been characterized in terms of morphological representations: increasing filters as unions of erosions and nonincreasing filters as unions of hit-or-miss operators. Based on these characterizations, (sub)optimal filters have been designed via image-process realizations. The present paper considers the precision of filter estimation via realizations. The following problems are considered: loss of performance owing to employing erosion filters limited by basis size, precision in the estimation of erosion bases, and precision in the estimation of union-of-hit-or-miss filters. A key point: while precision deteriorates for both erosion and hit-or-miss filters as window size increases, the number of image realizations required to obtain good estimation in erosion-filter design can be much less than the number required for hit-or-miss-filter design. Thus, while in theory optimal hit-or-miss filtering is better because the unconstrained optimal hit-or-miss filter is the conditional expectation, owing to estimation error it is very possible that estimated optimal erosion filters are better than estimated optimal hit-or-miss filters. 1994.

published proceedings

  • Signal Processing

altmetric score

  • 3

author list (cited authors)

  • Dougherty, E. R., & Loce, R. P.

citation count

  • 27

complete list of authors

  • Dougherty, Edward R||Loce, Robert P

publication date

  • November 1994