Abstract: This paper describes the problem of automated pollen grains image recognition using images
from microscope. This problem is relevant because it allows to automate a complex process of pollen
grains classification and to determine the beginning of pollen dispersion which cause an the allergic
responses. The main recognition methods are Hamming network Korotkiy, 1992 and structural
approach Fu, 1977. The paper includes Hamming network advantages over Hopfield network
Ossowski, 2000. The steps of preprocessing (noise filtering, image binarization, segmentation) use
OpenCV Bradsky et al, 2008 functions and the feature point method Bay et al, 2008. The paper
describes both preprocessing algorithms and main recognition methods. The experiments results
showed a relative efficiency of these methods. The conclusions about methods productivity based on
errors of type I and II. The paper includes alternative recognition methods which are planning to use in
the follow up research.
Keywords: image recognition, OpenCV, Hamming network, feature points method, pollen-grains,
structural pattern recognition.
ACM Classification Keywords: I.5.1 Pattern Recognition Model - Neural nets, Structural, I.5.4 Pattern
Recognition Applications - Computer vision
Link:
POLLEN GRAINS RECOGNITION USING STRUCTURAL APPROACH AND NEURAL
NETWORKS
Natalia Khanzhina, Elena Zamyatina
http://www.foibg.com/ijima/vol04/ijima04-03-p03.pdf