In this paper we present a novel algorithm to synthesize an optimal decision tree from OR-decision tables, an extension of standard decision tables, complete with the formal proof of optimality and computational cost analysis. As many problems which require to recognize particular patterns can be modeled with this formalism, we select two common binary image processing algorithms, namely connected components labeling and thinning, to show how these can be represented with decision tables, and the benets of their implementation as optimal decision trees in terms of reduced memory accesses. Experiments are reported, to show the computational time improvements over state of the art implementations.
Optimal Decision Trees for Local Image Processing Algorithms / Grana, Costantino; Montangero, Manuela; Borghesani, Daniele. - In: PATTERN RECOGNITION LETTERS. - ISSN 0167-8655. - STAMPA. - 33:16(2012), pp. 2302-2310. [10.1016/j.patrec.2012.08.015]
Optimal Decision Trees for Local Image Processing Algorithms
GRANA, Costantino;MONTANGERO, Manuela;BORGHESANI, Daniele
2012
Abstract
In this paper we present a novel algorithm to synthesize an optimal decision tree from OR-decision tables, an extension of standard decision tables, complete with the formal proof of optimality and computational cost analysis. As many problems which require to recognize particular patterns can be modeled with this formalism, we select two common binary image processing algorithms, namely connected components labeling and thinning, to show how these can be represented with decision tables, and the benets of their implementation as optimal decision trees in terms of reduced memory accesses. Experiments are reported, to show the computational time improvements over state of the art implementations.File | Dimensione | Formato | |
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