1993
DOI: 10.1007/bf00200826
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Computing the direction of heading from affine image flow

Abstract: Observers moving through a three-dimensional environment can use optic flow to determine their direction of heading. Existing heading algorithms use cartesian flow fields in which image flow is the displacement of image features over time. I explore a heading algorithm that uses affine flow instead. The affine flow at an image feature is its displacement modulo an affine transformation defined by its neighborhood. Modeling the observer's instantaneous motion by a translation and a rotation about an axis throug… Show more

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Cited by 12 publications
(10 citation statements)
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“…These are essentially the same equations as (6). It indicates that the virtual radial flow is quite similar to the flow pattern generated by translation toward the frontoparallel plane with average depth.…”
Section: Algorithmsupporting
confidence: 53%
See 1 more Smart Citation
“…These are essentially the same equations as (6). It indicates that the virtual radial flow is quite similar to the flow pattern generated by translation toward the frontoparallel plane with average depth.…”
Section: Algorithmsupporting
confidence: 53%
“…It is also important for computer vision. A large number of heading recovery algorithms from image sequences have been presented for computer vision [1][2][3][4] and several algorithms were proposed as method in which biological visual systems may recover heading from motion [5][6][7][8][9] . The algorithm of Rieger and Lawton 5 based on the method of Longuet-Higgins & Prazdny 2 is one of the methods which might be used by biological visual systems.…”
Section: Introductionmentioning
confidence: 99%
“…Since the perception of the curved path has little effect on the judgement, the bias observed in our experiment cannot be explained by the perceived curved path. Several models of human heading recovery successfully explain the bias with stimuli which simulate a small depth range (Hildreth, 1992;Beusmans, 1993;Hanada & Ejima, in press). The bias appears to arise from the limitation of computation in the human visual system.…”
Section: Discussionmentioning
confidence: 98%
“…When an observer rotates due to head, body or eye movement, it is not trivial to recover heading from the retinal flow alone. A large number of algorithms to recover heading have been presented for computer vision (e.g., Bruss and Horn, 1983;Louguet-Higgins and Prazdny, 1980;Kanatani, 1993) and several models of human heading perception have been proposed (e.g, Rieger & Lawton, 1985;Hildreth, 1992;Beusmans, 1993;Lappe & Rauschecker, 1993;Perrone, 1992;Royden, 1997;Beintema & van den Berg, 1998).…”
Section: Introductionmentioning
confidence: 99%
“…One such attribute is the increasing divergence of visual motion elements that define the outward radial pattern seen during forward self-movement van Doorn 1975, 1981), potentially implemented by a normalization of motion properties across a segment of the visual field to derive the affine motion of elements in that segment (Beusmans 1993). Extension of a subspace algorithm led to a biologically plausible two-layered population encoding network for heading estimation that accommodates eye rotation and depth of field effects (Lappe and Rauschecker 1993).…”
Section: Optic Flow Stimulusmentioning
confidence: 99%