When a multi-view measurement configuration is exploited, one can take advantage of incident field coming from different directions to improve the performance achievable in the reconstruction. Suppose obtaining such a multi-view configuration by moving the current position along the interval .
3.1. View Diversity
In this section, the impact of view diversity on the singular values of the scattering operator is analysed. Accordingly, suppose that the scattered field is collected for different directions of the incident field and at a single frequency. The scattering operator is
where
is the wavenumber at the fixed frequency.
At first, let us suppose that
is a discrete subset of
O. Let
M be the number of views taken by uniformly sampling
O. Thus, the left side of Equation (
15) is written as
where
is an unitary operator defined as
. The unitary operator
does not affect the eigenvalues of
but introduces a phase term on
. Accordingly, by including such a phase term in the eigenfunctions, the eigenvalues problem in Equation (
15) is equivalent to
where, now,
For simplicity, consider the case of
and
. In the first case,
and (
20) becomes
Now, since the two considered views are the extremal once (at
and
),
and Equation (
7) holds. Accordingly, the eigenvalues
exhibit a step-like behaviour with a flat part equal to
until the index
with
, and after they decay exponentially. The same behaviour can be also observed for the singular values of the scattering operator. This single step behaviour allows identifying
N as the number of degrees of freedom (NDF) ideally independent on the noise. By comparing such result with respect to the single view configuration, it is evident that adopting two different views, equal to the extremal ones, entails doubling the NDF. An example of this result is shown in
Figure 2.
Consider the case of
, since the discrete set of views is
, Equation (
20) becomes
where
,
and
. This situation is slightly different from the one addressed above. This is because for
the bands
overlap and the result given in Equation (
7) cannot be exploited. However, such an inconvenience can be overcome by recasting those bands to make them disjoint. In fact, instead of
,
and
, the operator
can be expressed in terms of the disjoint bands
,
and
.
Figure 3 gives some explanations about the recasting of the bands. In particular, the top panel shows the Fourier transform of the kernel functions of each operator appearing in Equation (
22), and the bottom one their overlapping. Accordingly, Equation (
22) can be rewritten as
Now, Equation (
7) holds. Hence, as long as
and
, the eigenvalues of the operator in Equation (
23) (and, thus, also the singular values) exhibit a two-step behaviour with knees occurring at the indexes
and
. Unlike before, a non-uniform increase in the singular values level can be observed that shapes the singular values behaviour so as to make the NDF dependent on the truncation threshold (hence, noise dependent). This affects the information metrics positively. In fact, having fixed the noise, higher singular values can lead to a more stable inversion procedure. However, the number of singular values different from zero does not change with respect to the the case of two extremal views.
The same reasoning can also be applied to a generic number
M (for simplicity odd) of views taken uniformly in
O. The Fourier transform of the kernel of operator in Equation (
20) is a band-limited function with support on
and consists in
steps. In particular, each step is supported over a spatial frequency interval
in size except for the one centred around the frequency zero, which is
large. Accordingly, the singular values exhibit a
step-like behaviour and the number of singular values on each step is
with
. Moreover, on the
mth step the singular values are equal to
with
. This result is very well verified by the example reported in
Figure 4.
The singular values exhibit the expected steps and their value estimation is also in strict accordance to the numerical result. For example, on the first step, the previous formula returns , which well agrees with the value given by the numerical simulation. Hence, summarising, the results obtained show that the maximum number of significant (different from zero) singular values can be obtained by using only two views at and , while introducing more views increases the singular values level. The latter affects positively the performances because it makes the reconstruction more stable against the noise.
Let us consider the case of views varying continuously, so that
and the operator
is now given by
This operator has already been studied in the literature [
29,
30]. Unfortunately, its eigenvalues are not known in closed form and we were not able to address such a lack. However, by following the same procedure recalled in
Section 2 and reported in [
4], we manage to introduce upper and lower bounds for eigenvalues of such operator. We start by observing that the Fourier transform of the kernel in Equation (
24) is a triangular window given by
with
. After dividing the frequency interval
in
disjoint subintervals
of size
and defining two sequences
and
as in Equations (
9) and (
10), we can build up the auxiliary operators
and
. The proposition in
Section 2 states that the eigenvalues of such operators bound those of
, that is,
. The operators
and
are in form given by Equation (
5). Accordingly, provided that
is greater than 4, Equation (
6) holds and we can foresee an
M and
step-like behaviour for
and
, respectively. In particular, on each step there are
eigenvalues, all almost constant at the values
and
, respectively. We can summarise these results in the following statement.
Statement 1:
Let the number of eigenvalues of which are greater than . If and hence , then it approximately holds that Obviously, these results also apply to the singular values given by when the threshold is set equal to .
In
Figure 5, it can be appreciated that the singular values of the operator
are bounded by
and
, which show a
M and
step-like behaviour. Moreover, if we choose a noise threshold
the number of relevant singular values above this threshold is 36, whereas the lower and upper bounds foreseen by Equation (
25) are 28 and 38, respectively.
Obviously, by increasing M, the range bounding the effective relevant singular values becomes narrower and the estimation of their number improves. Finally, we can notice that also in the continuous case adding more views simply shapes the singular value behaviour.
3.2. Frequency Diversity
In this section we consider the impact of the frequency diversity on the singular values of the scattering operator. Hence, we suppose to collect the scattering field for a fixed incidence direction (for the sake of simplicity,
) by varying the illumination frequency within the interval
. Accordingly, the scattering operator is
As in
Section 3.1, at first assume that
is a discrete set consisting of
M uniformly spaced frequencies
, belonging to the interval
and spaced of
. Accordingly, the operator
can be written as
where now
. On the contrary, as before, the presence of the operator
can affect the eigenvalues of
because it introduces a modulating term that can change the way in which the bands
overlap. To describe the effect of such a modulating term, we can do the following approximation
Posing
is equivalent to choosing the intermediate frequency of modulation [
31]. Accordingly, this term translates the frequency band
of a
factor. It is evident that, if
, such translation does not change the way in which the bands
overlap and the effect of such a modulating term is only to introduce a phase factor over the eigenfunctions. Conveniently, Equation (
27) can be recast as
where
,
and
(see
Figure 6 for a graphical explanation).
If
is chosen to have
,
and
, by exploiting the same reasoning as before, the eigenvalues exhibit
M steps with knees occurring at
, with
. On the
mth step, the eigenvalues are equal to
. In
Figure 7, an example referred to the case
is shown: the expected three steps are evident and there is also an accordance between the theoretical and numerical values of
. As a result of the discussion above, if
, we find that the maximum number of significant singular values depends on the highest adopted frequency and using more frequency simply shapes the singular value to have a multistep-like behaviour. If
, the modulating term affects the way in which the bands
overlap and the previous conclusions cannot be deduced. In such a case, the translation term introduces a different shaping on the eigenvalues and also an increasing of the number of significant singular values can be obtained. However, such situation does not have a practical interest because it is always assumed to collect the measures over a domain greater than the investigation one.
By following the same logical steps followed in the previous section, we can address also the case of a continuous interval
with the assumption
. Thus, the operator
becomes
Due to Equation (
28), we can re-write Equation (
30)
The Fourier transform of the kernel in Equation (
31) is given by
Suppose discretising the frequency interval
as before in
M intervals with a step
. Accordingly, the two spatial frequency intervals
and
are divided into
M intervals with steps
and
, respectively. We can construct the two auxiliary operators
and
by adopting the same strategy as in the previous section. Hence,
and
Now, by exploiting the same approach as before, the eigenvalues of and can be foreseen and used to upper and lower bound those of . The way to achieve that is summarised in the following statement.
Statement 2:
Let be the number of eigenvalues of that are greater than . For example, . If , , and hence , then it approximately holds that Of course, the statement rephrases with and in place of and for the singular value decomposition of the multifrequency scattering operator.
In
Figure 8, we show the singular value behaviour of
and its bounds. By setting a noise threshold
equal to
, the number of singular values above this threshold is 24 while the upper and lower bounds estimated with the statement in Equation (
35) are 32 and 21, respectively. According to the analysis above, if
, it can be concluded that, to increase the number of significant singular values, the highest adopted frequency should be increased as well. As for view diversity, the use of more frequencies shapes the singular value behaviour by increasing the corresponding numerical values and making the NDF dependent on the tolerable level of noise.