Authors
Bram Van Ginneken, Shigehiko Katsuragawa, Bart M ter Haar Romeny, Kunio Doi, Max A Viergever
Publication date
2002/2
Journal
IEEE transactions on medical imaging
Volume
21
Issue
2
Pages
139-149
Publisher
IEEE
Description
A fully automatic method is presented to detect abnormalities in frontal chest radiographs which are aggregated into an overall abnormality score. The method is aimed at finding abnormal signs of a diffuse textural nature, such as they are encountered in mass chest screening against tuberculosis (TB). The scheme starts with automatic segmentation of the lung fields, using active shape models. The segmentation is used to subdivide the lung fields into overlapping regions of various sizes. Texture features are extracted from each region, using the moments of responses to a multiscale filter bank. Additional "difference features" are obtained by subtracting feature vectors from corresponding regions in the left and right lung fields. A separate training set is constructed for each region. All regions are classified by voting among the k nearest neighbors, with leave-one-out. Next, the classification results of each region are …
Total citations
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Scholar articles
B Van Ginneken, S Katsuragawa, BM ter Haar Romeny… - IEEE transactions on medical imaging, 2002