The role of the complex textural microstructure co-occurrence matrices, based on Laws’ features, in the characterization and recognition of some pathological structures, from ultrasound images
The non-invasive diagnosis, based on ultrasound images, is a challenge in nowadays research. We develop computerized, texture-based methods, for automatic and computer assisted diagnosis, using the information obtained from ultrasound images. In this work, we defined the co-occurrence matrix of comp...
Main Authors: | Delia Alexandrina Mitrea, Sergiu Nedevschi, Mihail Abrudean, Radu Chifor, Radu Badea |
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Format: | Article |
Language: | English |
Published: |
International Science and Engineering Society, o.s.
2016-03-01
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Series: | International Journal of Advances in Telecommunications, Electrotechnics, Signals and Systems |
Online Access: | http://ijates.org/index.php/ijates/article/view/144 |
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