
This paper presents a method for automated vessel segmentation in retinal images. For each pixel in the field of view of the image, a 41-D feature vector is constructed, encoding information on the local intensity structure, spatial properties, and geometry at multiple scales. An AdaBoost classifier is trained on 789 914 gold standard examples of vessel and nonvessel pixels, then used for classifying previously unseen images. The algorithm was tested on the public digital retinal images for vessel extraction (DRIVE) set, frequently used in the literature and consisting of 40 manually labeled images with gold standard. Results were compared experimentally with those of eight algorithms as well as the additional manual segmentation provided by DRIVE. Training was conducted confined to the dedicated training set from the DRIVE database, and feature-based AdaBoost classifier (FABC) was tested on the 20 images from the test set. FABC achieved an area under the receiver operating characteristic (ROC) curve of 0.9561, in line with state-of-the-art approaches, but outperforming their accuracy ( 0.9597 versus 0.9473 for the nearest performer).
FUNDUS IMAGES, EXTRACTION, Databases, Factual, Normal Distribution, 610, Models, Biological, BLOOD-VESSELS, MATCHED-FILTERS, Artificial Intelligence, Image Processing, Computer-Assisted, Humans, NETWORK, Fluorescein Angiography, retinal images, EDGE-DETECTION, automated, vessel segmentation, retinal images, AdaBoost classifier, Reproducibility of Results, Retinal Vessels, vessel segmentation, Bayes Theorem, MODEL, ROC Curve, OPTIC DISC, AdaBoost classifier, Algorithms
FUNDUS IMAGES, EXTRACTION, Databases, Factual, Normal Distribution, 610, Models, Biological, BLOOD-VESSELS, MATCHED-FILTERS, Artificial Intelligence, Image Processing, Computer-Assisted, Humans, NETWORK, Fluorescein Angiography, retinal images, EDGE-DETECTION, automated, vessel segmentation, retinal images, AdaBoost classifier, Reproducibility of Results, Retinal Vessels, vessel segmentation, Bayes Theorem, MODEL, ROC Curve, OPTIC DISC, AdaBoost classifier, Algorithms
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