Agent-oriented image processing with the hp-adaptive projection-based interpolation operator
نویسندگان
چکیده
In this paper we discuss applications and design of the agent-oriented, hp-adaptive projection-based interpolation technique. We describe the use of the mesh adaptation process to produce the most faithful representation of the input image in the Finite Element space. We discuss the advantages of the agent-oriented application model both in general and in terms of the hp-adaptive application properties. Lastly, we describe a sample problem used as a proof of concept.
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