Texture Synthesis using Soft-Computing

The TEXRET-System, a texture retrieval system based on soft-computing technologies is being developed. One of the main system features is synthesis of the requested textures when these are not found in the database, which allows a growing of the database. Missing textures are synthesized interactively using Markov Random Fields and interactive genetic algorithms. This article is centered on the texture synthesis of the textures

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