Catalin Stoean

2papers

2 Papers

IVSep 26, 2019
Segmentation of points of interest during fetal cardiac assesment in the first trimester from color Doppler ultrasound

Ruxandra Stoean, Dominic Iliescu, Catalin Stoean

The present paper puts forward an incipient study that uses a traditional segmentation method based on Zernike moments for extracting significant features from frames of fetal echocardiograms from first trimester color Doppler examinations. A distance based approach is then used on the obtained indicators to classify frames of three given categories that should be present in a normal heart condition. The computational tool shows promise in supporting the obstetrician in a rapid recognition of heart views during screening.

CLFeb 14, 2018
Authorship Attribution Using the Chaos Game Representation

Daniel Lichtblau, Catalin Stoean

The Chaos Game Representation, a method for creating images from nucleotide sequences, is modified to make images from chunks of text documents. Machine learning methods are then applied to train classifiers based on authorship. Experiments are conducted on several benchmark data sets in English, including the widely used Federalist Papers, and one in Portuguese. Validation results for the trained classifiers are competitive with the best methods in prior literature. The methodology is also successfully applied for text categorization with encouraging results. One classifier method is moreover seen to hold promise for the task of digital fingerprinting.