RestoCut: Reconstruction of regular images using graph cuts

نویسنده

  • Tagir Valeev
چکیده

In this paper new approach to reconstruct images, removing unwanted objects from it, is described. The main idea of the introduced approach is to generate texture over unwanted object using graph cut based texture synthesis algorithm. Different texture synthesis techniques are briefly covered, while used technique is described in detail. After that, migration from the texture synthesis problem to the image reconstruction problem is explained, and some experimental results are shown.

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تاریخ انتشار 2007