Key points are not available for this paper at this time.
Due to the finite acquisition time of practical cameras, objects can move during image acquisition, therefore introducing motion blur degradations. Traditionally, these degradations are treated as undesirable artifacts that should be removed before further processing. In this work, we consider the use of motion blur as an indication of scene motion. ,Ve present two robust regu- larized motion estimation algorithns that consider the use of (motion) blur in their formulation. The first algorithm uses motion blur as prior knowledge for the estimation of the motion field. The second algorithm considers the joint estimation of the motion and motion blur. Each approach results in a motion blur point spread field, a motion field and a restored image in an approach that is different from previous work. Preliminarv results are presented.
Tull et al. (Tue,) studied this question.