Research and Implementation of Computer Graphics Separation Algorithm
DOI:
https://doi.org/10.53469/ijomsr.2025.08(06).02Keywords:
Computer graphics separation, Separation algorithms, GraphologyAbstract
Computer graphics separation is the separation of artificial and natural areas in a hybrid image which is synthesized between computer-generated graphics and natural images. Using mapping, we quantify the color image, convert the color plane formed by each color into a two-value image, map the labeled regions and edges to the original image, define and compute the roughness and edges of each region, and finally complete the identification of the various regions. In computer graphics separation courses, theoretical courses are separated from practical courses, so that the theoretical course of graphics becomes the preliminary course of practical classes. By explaining the principles and algorithms of the theoretical curriculum, students' interests are stimulated and students' connections between theory and practice are cultivated.
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