M. Bolduc et Md. Levine, A REVIEW OF BIOLOGICALLY MOTIVATED SPACE-VARIANT DATA REDUCTION MODELS FOR ROBOTIC VISION, Computer vision and image understanding, 69(2), 1998, pp. 170-184
The primate retina performs nonlinear ''image'' data reduction while p
roviding a compromise between high resolution where needed, a wide fie
ld-of-view, and small output image size. For autonomous robotics, this
compromise is useful for developing vision systems with adequate resp
onse times. This paper reviews the two classes of models of retino-cor
tical data reduction used in hardware implementations. The first class
reproduces the retina to cortex mapping based on conformal mapping fu
nctions. The pixel intensities are averaged in groups called receptive
fields (RF's) which are nonoverlapping and the averaging performed is
uniform. As is the case in the retina, the size of the RF's increases
with distance from the center of the sensor. Implementations using th
is class of models are reported to run at video rates (30 frames per s
econd). The second class of models reproduce, in addition to the varia
ble-resolution retino-cortical mapping, the overlap feature of recepti
ve fields of retinal ganglion cells. Achieving data reduction with thi
s class of models is more computationally expensive due to the RF over
lap. However an implementation using such a model running at a minimum
of 10 frames per second has been recently proposed. In addition to bi
ological consistency, models with overlapping fields permit the simple
selection of a variety of RF computational masks. (C) 1998 Academic P
ress.