Understanding and improving the realism of image composites
Su Xue, Aseem Agarwala, Julie Dorsey, Holly Rushmeier
In ACM Transactions on Graphics, 31(4), July 2012.
Abstract: Compositing is one of the most commonly performed operations in computer graphics. A realistic composite requires adjusting the appearance of the foreground and background so that they appear compatible; unfortunately, this task is challenging and poorly understood. We use statistical and visual perception experiments to study the realism of image composites. First, we evaluate a number of standard 2D image statistical measures, and identify those that are most significant in determining the realism of a composite. Then, we perform a human subjects experiment to determine how the changes in these key statistics influence human judgements of composite realism. Finally, we describe a data-driven algorithm that automatically adjusts these statistical measures in a foreground to make it more compatible with its background in a composite. We show a number of compositing results, and evaluate the performance of both our algorithm and previous work with a human subjects study.
@article{Xue:2012:UAI,
  author = {Su Xue and Aseem Agarwala and Julie Dorsey and Holly Rushmeier},
  title  = {Understanding and improving the realism of image composites},
  journal = {ACM Transactions on Graphics},
  volume = {31},
  number = {4},
  pages = {84:1--84:10},
  month = jul,
  year = {2012},
}
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