Image motion estimation from motion smear-a new computational model
- 1 April 1996
- journal article
- Published by Institute of Electrical and Electronics Engineers (IEEE)
- Vol. 18 (4) , 412-425
- https://doi.org/10.1109/34.491622
Abstract
Motion smear is an important visual cue for motion perception by the human vision system (HVS). However, in image analysis research, exploiting motion smear has been largely ignored. Rather, motion smear is usually considered as a degradation of images that needs to be removed. In this paper, the authors establish a computational model that estimates image motion from motion smear information-“motion from smear”. In many real situations, the shutter of the sensing camera must be kept open long enough to produce images of adequate signal-to-noise ratio (SNR), resulting in significant motion smear in images. The authors present a new motion blur model and an algorithm that enables unique estimation of image motion. A prototype sensor system that exploits the new motion blur model has been built to acquire data for “motion-from-smear”. Experimental results on images with both simulated smear and real smear, using the authors' “motion-from-smear” algorithm as well as a conventional motion estimation technique, are provided. The authors also show that temporal aliasing does not affect “motion-from-smear” to the same degree as it does algorithms that use displacement as a cue. “Motion-from-smear” provides an additional tool for motion estimation and effectively complements the existing techniques when apparent motion smear is presentKeywords
This publication has 11 references indexed in Scilit:
- Performance of optical flow techniquesInternational Journal of Computer Vision, 1994
- Visual performance of the toad (Bufo bufo) at low light levels: retinal ganglion cell responses and prey-catching accuracyJournal of Comparative Physiology A, 1993
- Maximum likelihood parametric blur identification based on a continuous spatial domain modelIEEE Transactions on Image Processing, 1992
- Maximum Likelihood Identification and Restoration of Images Using the Expectation-Maximization AlgorithmPublished by Springer Nature ,1991
- Regularization theory in image restoration-the stabilizing functional approachIEEE Transactions on Acoustics, Speech, and Signal Processing, 1990
- On the computation of motion from sequences of images-A reviewProceedings of the IEEE, 1988
- Cortical connections and parallel processing: Structure and functionBehavioral and Brain Sciences, 1986
- Determining optical flowArtificial Intelligence, 1981
- The snapping response of the toad, Bufo bufo, towards prey dummies at very low light intensitiesAmphibia-Reptilia, 1981
- Motion smearNature, 1980