Optimal face reconstruction using training

نویسندگان

  • D. Darian Muresan
  • Thomas W. Parks
چکیده

In previous work [2] we considered the problem of image interpolation from an adaptive optimal recovery point of view. We showed how a training set S determines a quadratic signal class and how to use this signal class to perform image interpolation. In [2] the training set S was taken from the low resolution version of the image we were interpolating. In this paper we continue our discussion of the method presented in [2] by looking more closely at the training set S. In particular, we will show how a training set of high resolution images can give very good interpolation results through the use of the method [2].

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تاریخ انتشار 2002