Reverse correlation techniques have been extensively used
in physiology (Marmarelis & Marmarelis
1978; Sakai, Naka, & Korenberg,
1988), allowing characterization of both
linear and nonlinear aspects of neuronal processing (e.g., Emerson, Bergen,
& Adelson,
1992; Emerson & Citron
1992). Over the past decades, Ahumada
(
1996) developed a psychophysical reverse
correlation technique, termed noise image classification (NIC), for deriving the
linear properties of sensory filters in the context of audition first (Ahumada,
1967; Ahumada, Marken, & Sandusky,
1975), and then vision (Ahumada,
1996, 2002; Beard & Ahumada,
1998). This work explores ways of
characterizing nonlinear aspects of psychophysical filters. One approach
consists of an extension of the NIC technique (ExtNIC), whereby second-order
(rather than just first-order) statistics in the classified noise are used to
derive sensory kernels. It is shown that under some conditions, this procedure
yields a good estimate of second-order kernels. A second, different approach is
also considered. This method uses functional minimization (fMin) to generate
kernels that best simulate psychophysical responses for a given set of stimuli.
Advantages and disadvantages of the two approaches are discussed. A mathematical
appendix shows some interesting facts: (1) that nonlinearities affect the linear
estimate (particularly target-present averages) obtained from the NIC method,
providing a rationale for some related observations made by Ahumada (
1967); (2) that for a linear filter followed
by a static nonlinearity (LN system), the ExtNIC estimate of the second-order
nonlinear kernel is correctly null, provided the criterion is unbiased; (3) that
for a biased criterion, such an estimate may contain predictable modulations
related to the linear filter; and (4) that under certain assumptions and
conditions, ExtNIC does return a correct estimate for the second-order nonlinear
kernel.