For most iris capturing scenarios, captured iris images
could easily blur when the user is out of the depth of field
(DOF) of the camera, or when he or she is moving. The
common solution is to let the user try the capturing process
again as the quality of these blurred iris images is not good
enough for recognition. In this paper, we propose a novel
iris deblurring algorithm that can be used to improve the robustness
and nonintrusiveness for iris capture. Unlike other
iris deblurring algorithms, the key feature of our algorithm
is that we use the domain knowledge inherent in iris images
and iris capture settings to improve the performance, which
could be in the form of iris image statistics, characteristics
of pupils or highlights, or even depth information from
the iris capturing system itself. Our experiments on both
synthetic and real data demonstrate that our deblurring algorithm
can significantly restore blurred iris patterns and
therefore improve the robustness of...