Publications:A novel technique to extract accurate cell contours applied to analysis of phytoplankton images

From ISLAB/CAISR

Do not edit this section

Keep all hand-made modifications below

Title A novel technique to extract accurate cell contours applied to analysis of phytoplankton images
Author Gelzinis Adas and Antanas Verikas and Vaiciukynas Evaldas and Bacauskiene Marija
Year 2015
PublicationType Journal Paper
Journal Machine Vision and Applications
HostPublication
Conference
DOI http://dx.doi.org/10.1007/s00138-014-0643-0
Diva url http://hh.diva-portal.org/smash/record.jsf?searchId=1&pid=diva2:778099
Abstract Active contour model (ACM) is an image segmentation technique widely applied for object detection. Most of the research in ACM area is dedicated to the development of various energy functions based on physical intuition. Here, instead of constructing a new energy function, we manipulate values of ACM parameters to generate a multitude of potential contours, score them using a machine-learned ranking technique, and select the best contour for each object in question. Several learning-to-rank (L2R) methods are evaluated with a goal to choose the most accurate in assessing the quality of generated contours. Superiority of the proposed segmentation approach over the original boosted edge-based ACM and three ACM implementations using the level-set framework is demonstrated for the task of Prorocentrum minimum cells’ detection in phytoplankton images. Experiments show that diverse set of contour features with grading learned by a variant of multiple additive regression trees (λ-MART) helped to extract precise contour for 87.6 % of cells tested.