Author/Authors :
B.P. Tiddeman، نويسنده , , M.R. Stirrat ، نويسنده , , D.I. Perrett، نويسنده ,
Abstract :
The ability to transform facial images between groups (e.g. from young to old, or from male to female) has
applications in psychological research, police investigations, medicine and entertainment. Current techniques suffer
either from a lack of realism due to unrealistic or inappropriate textures in the output images, or a lack of statistical
validity, e.g. by using only a single example image for training. This paper describes a new method for improving the
realism and effectiveness of facial transformations (e.g. ageing, feminising etc.) of individuals. The method aims to
transform low resolution image data using the mean differences between the two groups, but converges on more
specific texture features at the finer resolutions. We separate high and low resolution information by transforming the
image into a wavelet domain. At each point we calculate a mapping from the original set to the target set based on the
probability distributions of the input and output wavelet values. These distributions are estimated from the example
images, using the assumption that the distribution depends on the values in a local neighbourhood of the point (the
Markov Random Field (MRF) assumption). We use a causal neighbourhood that spans multiple coarser scales of the
wavelet pyramid. The distributions are estimated by smoothing the histogram of example values. By increasing the
smoothing of the histograms at coarser resolutions we are able to maintain perceived identity across the transforms
while producing realistic fine-scale textures. We use perceptual testing to validate the new method, and the results
show that it can produce more accurate shifts in perceived age and an increase in realism