Authentication of Bee Pollen Grains in Bright-Field Microscopy by Combining One-Class Classification Techniques and Image Processing
Metadatos
Afficher la notice complèteAuteur
Chica Serrano, ManuelDate
2012Referencia bibliográfica
Microsc. Res. Tech. 75:1475–1485 (2012)
Résumé
A novel method for authenticating pollen grains in bright-field microscopic images
is presented in this work. The usage of this new method is clear in many application fields such as
bee-keeping sector, where laboratory experts need to identify fraudulent bee pollen samples
against local known pollen types. Our system is based on image processing and one-class classifica-
tion to reject unknown pollen grain objects. The latter classification technique allows us to tackle
the major difficulty of the problem, the existence of many possible fraudulent pollen types, and the
impossibility of modeling all of them. Different one-class classification paradigms are compared to
study the most suitable technique for solving the problem. In addition, feature selection algorithms
are applied to reduce the complexity and increase the accuracy of the models. For each local pollen
type, a one-class classifier is trained and aggregated into a multiclassifier model. This multiclassifi-
cation scheme combines the output of all the one-class classifiers in a unique final response. The
proposed method is validated by authenticating pollen grains belonging to different Spanish bee
pollen types. The overall accuracy of the system on classifying fraudulent microscopic pollen grain
objects is 92.3%. The system is able to rapidly reject pollen grains, which belong to nonlocal pollen
types, reducing the laboratory work and effort. The number of possible applications of this authen-
tication method in the microscopy research field is unlimited.