Biological shape characterization for automatic image recognition and diagnosis of protozoan parasites of the genus Eimeria

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We describe an approach of automatic feature extraction for shape characterization of seven distinct species of Eimeria, a protozoan parasite of domestic fowl. We used digital images of oocysts, a round-shaped stage presenting inter-specific variability. Three groups of features were used: curvature characterization, size and symmetry, and internal structure quantification. Species discrimination was performed with a Bayesian classifier using Gaussian distribution. A database comprising 3891 micrographs was constructed and samples of each species were employed for the training process. The classifier presented an overall correct classification of 85.75%. Finally, we implemented a real-time diagnostic tool through a web interface, providing a remote diagnosis front-end.

论文关键词:Shape analysis,Feature extraction,Pattern classification,Image processing,Remote diagnosis,Real-time systems,Eimeria,Avian coccidiosis

论文评审过程:Received 21 July 2006, Revised 21 November 2006, Accepted 6 December 2006, Available online 23 December 2006.

论文官网地址:https://doi.org/10.1016/j.patcog.2006.12.006