Scheduling Straight-Line Code Using Reinforcement Learning and Rollouts
McGovern, Amy, Moss, J. Eliot B.
–Neural Information Processing Systems
In 1986, Tanner and Mead [1] implemented an interesting constraint satisfaction circuitfor global motion sensing in aVLSI. We report here a new and improved aVLSI implementation that provides smooth optical flow as well as global motion in a two dimensional visual field. The computation ofoptical flow is an ill-posed problem, which expresses itself as the aperture problem. However, the optical flow can be estimated by the use of regularization methods, in which additional constraints are introduced interms of a global energy functional that must be minimized. We show how the algorithmic constraints of Hom and Schunck [2] on computing smoothoptical flow can be mapped onto the physical constraints of an equivalent electronic network.
Neural Information Processing Systems
Dec-31-1999
- Country:
- North America > United States > Massachusetts > Hampshire County > Amherst (0.14)
- Technology: