Selective Integration: A Model for Disparity Estimation
–Neural Information Processing Systems
Local disparity information is often sparse and noisy, which creates two conflicting demands when estimating disparity in an image re(cid:173) gion: the need to spatially average to get an accurate estimate, and the problem of not averaging over discontinuities. We have devel(cid:173) oped a network model of disparity estimation based on disparity(cid:173) selective neurons, such as those found in the early stages of process(cid:173) ing in visual cortex. The model can accurately estimate multiple disparities in a region, which may be caused by transparency or oc(cid:173) clusion, in real images and random-dot stereograms. The use of a selection mechanism to selectively integrate reliable local disparity estimates results in superior performance compared to standard back-propagation and cross-correlation approaches. In addition, the representations learned with this selection mechanism are con(cid:173) sistent with recent neurophysiological results of von der Heydt, Zhou, Friedman, and Poggio [8] for cells in cortical visual area V2.
Neural Information Processing Systems
Apr-6-2023, 18:12:18 GMT
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