| Literature DB >> 56387 |
Abstract
Markovian analysis is a method to measure optical texture based on gray-level transition probabilities in digitized images. Experiments are described that investigate that classification performance of parameters generated by Markovian analysis. Results using Markov texture parameters show that the selection of a Markov step size strongly affects classification error rates and the number of parameters required to achieve the maximum correct classification rates. Markov texture parameters are shown to achieve high rates of correct classification in discriminating images of normal from abnormal cervical cell nuclei.Mesh:
Year: 1976 PMID: 56387 DOI: 10.1177/24.1.56387
Source DB: PubMed Journal: J Histochem Cytochem ISSN: 0022-1554 Impact factor: 2.479