Economy of scale: a motion sensor with variable speed tuning

J Vis. 2005 Jan 26;5(1):28-33. doi: 10.1167/5.1.3.

Abstract

We have previously presented a model of how neurons in the primate middle temporal (MT/V5) area can develop selectivity for image speed by using common properties of the V1 neurons that precede them in the visual motion pathway (J. A. Perrone & A. Thiele, 2002). The motion sensor developed in this model is based on two broad classes of V1 complex neurons (sustained and transient). The S-type neuron has low-pass temporal frequency tuning, p(omega), and the T-type has band-pass temporal frequency tuning, m(omega). The outputs from the S and T neurons are combined in a special way (weighted intersection mechanism [WIM]) to generate a sensor tuned to a particular speed, v. Here I go on to show that if the S and T temporal frequency tuning functions have a particular form (i.e., p(omega)/(m(omega) = k/omega), then a motion sensor with variable speed tuning can be generated from just two V1 neurons. A simple scaling of the S- or T-type neuron output before it is incorporated into the WIM model produces a motion sensor that can be tuned to a wide continuous range of optimal speeds.

MeSH terms

  • Animals
  • Macaca mulatta
  • Mathematics
  • Models, Neurological*
  • Motion Perception / physiology*
  • Neurons / physiology*
  • Visual Cortex / cytology*
  • Visual Pathways / physiology