Abstract: This paper revisits the state-of-the-art resampling detector, which is based on periodic artifacts in the residue of a local linear predictor. Inspired by recent findings from the literature, we take a closer look at the complex detection procedure and model the detected artifacts in the spatial and frequency domain by means of the variance of the prediction residue. We give an exact formulation on how transformation parameters influence the appearance of periodic artifacts and analytically derive the expected position of characteristic resampling peaks. We present an equivalent accelerated and simplified detector, which is orders of magnitudes faster than the conventional scheme and experimentally shown to be comparably reliable.

  url          = {http://portal.acm.org/ft_gateway.cfm?id=1411333&type=pdf&coll=portal&dl=ACM&CFID=4178321&CFTOKEN=80164740},
  author       = {Matthias Kirchner},
  year         = {2008},
  title        = {Fast and reliable resampling detection by spectral analysis of fixed linear predictor residue},