Author/Authors :
Gunturk، نويسنده , , B.K.، نويسنده , , Batur، نويسنده , , A.U.، نويسنده , , Altunbasak، نويسنده , , Y.، نويسنده , , Hayes، نويسنده , , M.H.، نويسنده , , III، نويسنده , , Mersereau، نويسنده , , R.M.
، نويسنده ,
Abstract :
Face images that are captured by surveillance
cameras usually have a very low resolution, which significantly
limits the performance of face recognition systems. In the past,
super-resolution techniques have been proposed to increase the
resolution by combining information from multiple images. These
techniques use super-resolution as a preprocessing step to obtain
a high-resolution image that is later passed to a face recognition
system. Considering that most state-of-the-art face recognition
systems use an initial dimensionality reduction method, we
propose to transfer the super-resolution reconstruction from pixel
domain to a lower dimensional face space. Such an approach
has the advantage of a significant decrease in the computational
complexity of the super-resolution reconstruction. The reconstruction
algorithm no longer tries to obtain a visually improved
high-quality image, but instead constructs the information required
by the recognition system directly in the low dimensional
domain without any unnecessary overhead. In addition, we show
that face-space super-resolution is more robust to registration
errors and noise than pixel-domain super-resolution because of
the addition of model-based constraints.
Keywords :
Dynamic range extension , multiframereconstruction , super-resolution. , Face recognition