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Neural gradient models for the measurement of image velocity

Published online by Cambridge University Press:  02 June 2009

Z. Fei Jin
Affiliation:
Centre for Visual Sciences, Research School of Biological Sciences, Australian National University, Canberra, A.C.T. 2601, Australia
M. V. Srinivasan
Affiliation:
Centre for Visual Sciences, Research School of Biological Sciences, Australian National University, Canberra, A.C.T. 2601, Australia

Abstract

Although gradient schemes for detecting the motion of images and measuring their velocities are commonly used in computer vision, and although there is increasing evidence to support the existence of such schemes in biological vision, little attention has been directed to suggesting how such computations might be realized by neural hardware. This paper proposes two simple models, consisting of physiologically realistic networks of neurons, that approximate the gradient scheme. Computer simulations demonstrate that the models measure the speed of an object or pattern independently of its structural properties.

Type
Research Article
Copyright
Copyright © Cambridge University Press 1990

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References

David, C.T. (1982). “Compensation for height in the control of ground- speed by Drosophila in a new, ldquo;Barber's Pole” wind tunnel. Journal of Comparative Physiology 147, 485493.CrossRefGoogle Scholar
Fennema, E.V. & Thompson, W.B. (1979). Velocity determination in scenes containing several moving objects. Computer Graphics and Image Processing 9, 301315.CrossRefGoogle Scholar
Horn, B.K.P. & Schunck, B.G. (1981). Determining optical flow. Artificial Intelligence 17, 185203.CrossRefGoogle Scholar
Horridge, G.A. (1987). The evolution of visual processing and the construction of seeing systems. Proceeding of the Royal Society B (London) 230, 279292.Google ScholarPubMed
Horridge, G.A. (1990). A template theory to relate visual processing to digital circuitry. Proceedings of the Royal Society B (London) 239, 1733.Google ScholarPubMed
Hubel, D.H. & Wiesel, T.N. (1962). Receptive fields, binocular interaction, and functional architecture in cat's visual cortex. Journal of Physiology 160, 106154.CrossRefGoogle ScholarPubMed
Katz, B. (1966). Nerve, Muscle, and Synapse. New York: McGraw-Hill.Google Scholar
Laughlin, S.B., Howard, J. & Blakeslee, B. (1987). Synaptic limitations to contrast coding in the retina of blowfly Calliphora. Proceedings of the Royal Society B (London) 231, 437467.Google ScholarPubMed
Lima, J.O. & Murphy, J.A. (1975). Estimating the velocity of moving images in television signals. Computer Graphics and Imaging Processing 4, 311327.Google Scholar
Marr, D. & Ullman, S. (1981). Directional selectivity and its use in early visual processing. Proceedings of the Royal Society B (London) 211, 151180.Google ScholarPubMed
Mather, G. (1987). The dependence of edge displacement thresholds on edge blur, contrast, and displacement distance. Vision Research 27, 16311637.CrossRefGoogle ScholarPubMed
Mather, G. (1988). Modelling motion detection: comparisons with psychophysical data (in preparation).Google Scholar
Maunsell, J.H. & Newsome, W.T. (1987). Visual processing in monkey extrastriate cortex. Annual Review of Neuroscience 10, 363401.CrossRefGoogle ScholarPubMed
McKee, S.P., Silverman, G.H. & Nakayama, K. (1986). Precise velocity discrimination despite random variations in temporal frequency and contrast. Vision Research 26, 609619.CrossRefGoogle Scholar
Moulden, B. & Begg, H. (1986). Some tests of the Marr-Ullman model of movement detection. Perception 15, 139155.CrossRefGoogle ScholarPubMed
Murakami, O., Ohtsuka, T. & Shimazaki, H. (1975). Effects of aspartate and glutamate on the bipolar cells of the carp retina. Brain Research 343, 230235.Google Scholar
Olberg, R.M. (1981). Object and self-movement detectors in the ventral nerve cord of the dragonfly. Journal of Comparative Physiology 141, 327334.CrossRefGoogle Scholar
Osorio, D. (1987). Temporal and spatial properties of sustaining cells in the medulla of the locust. Journal of Comparative Physiology 161, 441445.CrossRefGoogle Scholar
Reichardt, W. (1969). Movement perception in insects. In Processing of Optical Data by Organisms and by Machines, ed. Reichardt, W., pp. 465493. New York: Academic Press.Google Scholar
Rodieck, R.W. (1973). The Vertebrate Retina. San Francisco, California: Freeman and Company.Google Scholar
Slaughter, M. & Miller, R.F. (1983). The role of executor amino acid transmitters in the mudpuppy retina: an analysis with kainic acid and N-methyl aspartate. Journal of Neuroscience 3, 17011711.CrossRefGoogle Scholar
Sobey, P. & Horridge, G.A. (1990). Simulation of the template model of vision. Proceedings of the Royal Society B (London) 240, 211229.Google Scholar
Srinivasan, M.V. & Bernard, G.D. (1976). A proposed mechanism for multiplication of neural signals. Biological Cybernetics 21, 227236.CrossRefGoogle ScholarPubMed
Torre, V. & Poggio, T. (1978). A synaptic mechanism possibly underlying directional selectivity to motion. Proceedings of the Royal Society B (London) 202, 409416.Google Scholar
Ullman, S. (1986). Artificial intelligence and the brain: computational study of the visual system. Annual Review of Neuroscience 9, 126.CrossRefGoogle ScholarPubMed