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What is Classifier Combination

Handbook of Research on Advanced Techniques in Diagnostic Imaging and Biomedical Applications
Classifier combination consists in combining results obtained from a set of classifiers to achieve higher performance than each single classifier.
Published in Chapter:
Machine Learning in Morphological Segmentation
O. Lezoray (Universite de Caen Basse-Normandie, France), G. Lebrun (Universite de Caen Basse-Normandie, France), C. Meurie (INRETS-LEOST, France), C. Charrier (Universite de Caen Basse-Normandie, France), A. Elmotataz (Universite de Caen Basse-Normandie, France), and M. Lecluse (Centre Hospitalier Public du Cotentin, France)
DOI: 10.4018/978-1-60566-314-2.ch021
Abstract
The segmentation of microscopic images is a challenging application that can have numerous applications ranging from prognosis to diagnosis. Mathematical morphology is a very well established theory to process images. Segmentation by morphological means is based on watershed that considers an image as a topographic surface. Watershed requires input and marker image. The user can provide the latter but far more relevant results can be obtained for watershed segmentation if marker extraction relies on prior knowledge. Parameters governing marker extraction varying from image to image, machine learning approaches are of interest for robust extraction of markers. We review different strategies for extracting markers by machine learning: single classifier, multiple classifier, single classifier optimized by model selection.
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More Results
Combining Classifiers and Learning Mixture-of-Experts
Given a number of classifiers, each classifies a same input x into a class label, and the labels maybe different for different classifiers. We seek a rule M(x) that combines these classifiers as a new one that performs better than anyone of them
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