is is typically the case
t the measured signal
be useful in practical
sets of the atmosphere
estimated from them,
nations, and probably
t. Initially, vegetation
t part, one in the red
ntion was given to the
id Tanre, 1992; Pinty
by Holben, 1986) were
minimising dVI/dSj.
ears.
ablished, one for each
i indices and variables
precipitations to large
lumber of independent
ided by this practice:
index, or if more than
Zk, these variables are
unless these relations
d treatment than will
ising instrument, even
: spectral responses of
ons y = g( Z) already
nsors currently under
of s imil ar sensors, for
he number of channels
lonstrated by pointing
From two wide-band
i vegetation index, the
« this albedo from the
i, namely those that
than being able to
parameters can be
mally, these models
Z(r,f,A,n)
[t. s<yi)
Y(f,t) H
Figure 6: Graphical representation of the goal of remote sensing, showing the special
status of empirical BRDF models.
Empirical BRDF models have been developed since early this century, in particular to characterise the
directional reflectance of the surface of the Moon as observed from the Earth ( e.g ., Minnaert, 1941). The
models of Roujean et al. (1992), and of Rahman el al. (1993), intended for use with remote sensing data
from space, provide but two recent examples of this approach. The main drawbacks of this approach are as
follows:
Theorem 10. Empirical BRDF models of the type Z = h(X, P) cannot provide any understanding of the
processes controlling Z, nor do they characterize the system in terms of the variables of interest Y.
Why do we develop these models, since they do not fulfill either of the two objectives (provide an
understanding of the processes controlling the measurements and characterise the observed system) stated
&t the start of this paper? Because these simple models can be used effectively in the following three
specific applications: (i) to provide the shape of the BRDF as a lower boundary condition for atmospheric
or vegetation models, (ii) to generate the reflectances that would have been observed under a controlled
geometry of illumination and observation, and (iii) to estimate the directional hemispherical reflectance
(albedo) of the surface by integrating the sampled BRDF over all viewing angles.
The use of an empirical BRDF model in any one of these three applications presupposes that this model
can reliably and accurately represent the bidirectional reflectance of the medium under arbitrary geometries
of illumination and observation. Since these models cannot be validated in the strict sense advocated by
Pinty and Verstraete (1992), extra care must be given to the verification of their performance for a wide
variety of angular conditions and surface types.
CONCLUSIONS
Various sectors of economic activity and scientific inquiry require repetitive, high spatial resolution data
on the state and evolution of the environment. Sensors on board satellite platforms appear to provide the
only economically feasible solution available today to collect relevant information at these scales and reso
lutions. The dichotomy between the natures of the measured signals and the variables of interest prompted
a discussion of the feasibility of retrieving useful information on the variables of interest from the space
measurements. It was also argued that the physical understanding of the physics of the signal was necessary
to develop and support practical applications, and to gain knowledge on the fundamental processes that
govern the evolution of these environments.
A variety of approaches exist to exploit remote sensing data. Detailed physical models can incorporate
much explicit knowledge of the structure and properties of complex media, but do not easily lend themselves
to operational applications. Simpler but still physical models may be inverted against remote sensing data,
but this process results in the retrieval of the state variables controlling the transfer of radiation in the
medium. All of these models embody our knowledge of the radiative transfer processes that control the
measured signals. The inversion of such models also provides an objective way to estimate the state variables
of the radiative transfer problem. The values of other variables of interest may be deduced, provided they
depend on one or more of these state variables. This same restriction also applies to direct empirical methods,
including vegetation indices. These methods currently support many practical applications, but suffer from
various intrinsic limitations. Finally, empirical BRDF models have been found useful only in very specific
applications.
I