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Description, recognition and analysis of biological images

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conference contribution
posted on 2025-05-09, 06:25 authored by Donggang Yu, Jesse S. Jin, Suhuai LuoSuhuai Luo, Tuan D. Pham, Wei Lai
Description, recognition and analysis biological images plays an important role for human to describe and understand the related biological information. The color images are separated by color reduction. A new and efficient linearization algorithm is introduced based on some criteria of difference chain code. A series of critical points is got based on the linearized lines. The series of curvature angle, linearity, maximum linearity, convexity, concavity and bend angle of linearized lines are calculated from the starting line to the end line along all smoothed contours. The useful method can be used for shape description and recognition. The analysis, decision, classification of the biological images are based on the description of morphological structures, color information and prior knowledge, which are associated each other. The efficiency of the algorithms is described based on two applications. One application is the description, recognition and analysis of color flower images. Another one is related to the dynamic description, recognition and analysis of cellcycle images.

History

Source title

Proceedings of the 2009 International Symposium on Computational Models for Life Sciences

Name of conference

2009 International Symposium on Computational Models for Life Sciences (CMLS'09)

Location

Sofia, Bulgaria

Start date

2009-07-28

End date

2009-07-29

Pagination

23-42

Publisher

American Institute of Physics

Place published

New York

Language

  • en, English

College/Research Centre

Faculty of Science and Information Technology

School

School of Design, Communication and Information Technology

Rights statement

© American Institute of Physics

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