6533b82cfe1ef96bd128f715

RESEARCH PRODUCT

Automatic Detection of Hemangioma through a Cascade of Self-organizing Map Clustering and Morphological Operators

Marta ZamfirCatalina NeghinaAlina SultanaMihai Ciuc

subject

Self-organizing mapComputer science050801 communication & media studies02 engineering and technologycomputer.software_genreFuzzy logicImage (mathematics)Hemangioma0508 media and communications0202 electrical engineering electronic engineering information engineeringmedicineLayer (object-oriented design)Cluster analysisFuzzy C-meansGeneral Environmental SciencePixelbusiness.industry05 social sciencesPattern recognitionmedicine.diseasehemangiomaCascadeGeneral Earth and Planetary Sciences020201 artificial intelligence & image processingArtificial intelligenceData miningbusinesscomputerSelf Organizing Mapclustering

description

Abstract In this paper we propose a method for the automatic detection of hemangioma regions, consisting of a cascade of algorithms: a Self Organizing Map (SOM) for clustering the image pixels in 25 classes (using a 5x5 output layer) followed by a morphological method of reducing the number of classes (MMRNC) to only two classes: hemangioma and non-hemangioma. We named this method SOM-MMRNC. To evaluate the performance of the proposed method we have used Fuzzy C-means (FCM) for comparison. The algorithms were tested on 33 images; for most images, the proposed method and FCM obtain similar overall scores, within one percent of each other. However, in about 18% of the cases, there is a significant increase of the overall score for SOM-MMRNC (over 3.5%). On average, the results obtained with the proposed cascade are 1.06% better for each image.

10.1016/j.procs.2016.07.023http://dx.doi.org/10.1016/j.procs.2016.07.023