Characterization and recognition of cell structures in biomedical images
نویسندگان
چکیده
The study of microtubules by biologists is a very time consuming task. To support the research on microtubules, this paper proposes an automatic analysis algorithm of the microtubules in (EB1) fluorescence images. The proposed algorithm consist of two parts. The first part is a segmentation technique based on mathematical morphology which extracts the microtubules out of a 2D image. After the extraction of the microtubules a tracking algorithm is started to extract information on the dynamics of the microtubules in video. Keywords— Segmentation, Tracking, Kalman filter, microtubules
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