1. Introduction
Microwave imaging (MWI) has emerged as a transformative technology in various fields due to its ability to penetrate optically opaque materials. Its applications span across various domains, including non-destructive testing (NDT) of industrial materials [
1,
2], biomedical imaging for early disease detection [
3,
4], and security screening for concealed threat identification [
5,
6].
Holographic MWI techniques offer high-speed qualitative imaging capabilities. Traditional holographic systems often rely on the acquisition of wideband data to obtain range resolution [
5,
7]. Although they have been successfully employed for applications such as security screening of passengers at airports [
5], they depend on approximations that restrict their applicability in near-field scenarios, where finer spatial details are critical. In particular, far-field holographic imaging techniques fail to capture and process the evanescent waves emanated by the objects, limiting their resolution and accuracy. To overcome these challenges, near-field holographic imaging systems have been developed to obtain higher resolutions by processing the measured portion of the evanescent waves [
8].
In general, the near-field holographic imaging approach, which leverages measured point spread functions (PSFs), provides several advantages over the conventional farfield holographic imaging techniques, including the following: (1) Measured PSFs accurately capture the near-field behavior of the antennas used in the specific imaging setup, leading to more realistic system modeling. (2) Unlike analytical PSFs in the far-field holography, which assume scalar far-field values at isolated points, measured PSFs represent actual responses such as S-parameters or terminal voltages. (3) Measured PSFs reflect the true electromagnetic properties of the background medium and include the effects of all components in the imaging system—such as antennas, positioners, and measurement chambers—avoiding the oversimplified assumptions used in far-field holography. (4) By using a calibrated scattering probe of known material and size, the system’s sensitivity to contrast can be quantified. This enables accurate and quantitative imaging [
9,
10]. (5) The system of equations solved in near-field holographic imaging at each spectral point is smaller and better conditioned than those in optimization-based microwave imaging methods [
11]. This not only improves the computational efficiency but also allows for natural parallelization, as each spectral point can be processed independently. (6) Near-field holographic imaging eliminates the need for interpolation in the spectral domain (as implemented in far-field holography [
8]), simplifying the reconstruction process. (7) Unlike far-field holographic imaging, near-field holographic imaging does not rely on the assumption that the spatial frequency variables are independent, thereby reducing reconstruction artifacts. (8) Data from multiple antennas, including both forward- and back-scattered signals, can be combined within a single linear system to enhance spatial resolution and reduce image artifacts. (9) Near-field holographic imaging performs effectively with a smaller number of frequency samples, particularly when multiple transmitter/receiver channels are used. This contrasts with far-field holography, which requires densely sampled frequencies due to its reliance on a three-dimensional (3D) inverse Fourier transform.
We emphasize that the near-field holographic imaging technique is based on the Born approximation, which assumes that the incident field in the presence of the object is the same as the incident field in the absence of the object. This assumption linearizes the scattering integral and allows for the use of convolution theory (which holds only for linear systems). However, it provides the best results primarily for small or low-contrast objects (weak scatterers).
In particular, the condition for applying the first-order Born approximation is that the radius
a of a sphere enclosing the object and its refractive index
n need to satisfy (
n− 1)
a <
/4, where
is the wavelength in the background medium [
12,
13]. Thus, when the objects or their contrasts (with respect to the background medium) become larger, or when there are multiple objects inside the imaged domain, the Born assumption imposes imaging errors due to further disturbance of the linearity of the imaging system.
This challenge can be overcome using iterative optimization methods such as the Born iterative method (e.g., see [
14]), distorted Born iterative method (e.g., see [
15]), hybrid Born–Rytov method (e.g., see [
10]), Newton-type methods (e.g., see [
16]), contrast source inversion (e.g., see [
17]), or hybrid and data-driven techniques such as machine learning/deep learning techniques (e.g., see [
18]), etc. However, these techniques have certain drawbacks in practical applications, including being extremely demanding in terms of memory and time, sensitivity to initial guess, ill-posedness of the solution, and the requirement for large datasets.
Although near-field holographic imaging techniques initially required wideband information to perform three-dimensional (3D) imaging [
19], later these techniques used a receiver antenna array to perform 3D imaging using narrow-band data [
20]. Narrow-band near-field holographic imaging systems have also been developed for cylindrical setups, where an array of receiver antennas collects scattered fields while rotating, together with the transmitter antenna, around the imaged medium [
21]. Despite these advancements, significant obstacles to employing these techniques in applications demanding high-speed imaging remain. In particular, in [
21], data acquisition time is a burden since responses need to be collected over a cylindrical aperture by mechanically scanning a transmitter and an array of receiver antennas.
To speed up the data acquisition, electronic scanning of an antenna array can be used instead of mechanical scanning. One method is using a two-dimensional (2D) array of antennas covering the aperture (e.g., see [
22]). However, this method is costly due to the use of a large number of antennas and the switching network to control the data acquisition. Another common method that alleviates the cost issue involves arranging antenna arrays in one direction while mechanically scanning them along the perpendicular direction (e.g., see [
23,
24,
25]). Thus, in this work, we take this principle into practice and we build a system featuring the space-invariant property by mimicking mechanical scanning along the azimuthal axis as implemented in [
21] via an array of antennas switched electronically. The system’s space-invariant property means that when an object shifts along the cross-range direction (azimuthal or longitudinal directions), its response remains the same but shifts with the same amount and along the same direction [
26]. This allows the scattered field measurements to be modeled as a convolution between the point spread function (PSF) and the object’s reflectivity profile, enabling efficient image reconstruction using Fourier-based techniques [
8]. To build such a system, we develop a novel switching mechanism utilizing two switching networks that virtually (electronically) rotate the transmitter and the array of receivers around the imaged medium for data collection. While mechanical scanning is still required along the longitudinal axis, the electronic data collection along the azimuthal axis expedites the data acquisition process significantly. We also demonstrate the possibility of collecting more samples along the azimuthal axis via combining a few mechanical scanning steps with the electronic scanning. This alleviates the coarse sampling in the electronic scanning scheme, leading to further enhancement of the reconstructed images. The performance of the proposed imaging techniques will be demonstrated via simulation results and experiments.
3. Simulations
This section evaluates the performance of the proposed imaging technique using simulated data obtained from FEKO [
28]. Simulations were carried out at two operating frequencies: 1.5 GHz and 1.8 GHz.
With the aim of covering the full circle and considering the size of antennas used in the experiments (discussed later), we used an angular separation of 10 deg between the antennas, which led to having 36 antennas.
In the simulations, all the utilized antennas were z-polarized resonant dipoles. The background medium was characterized by and S/m, while the imaged objects (OUTs) were assigned and S/m. The scattered fields were acquired over a cylindrical aperture with radius mm and height mm.
The imaging was performed on three radial surfaces: 24 mm, 36 mm, and 48 mm. The point spread functions (PSFs) for small 4 mm cuboids placed at these radial distances were simulated. To mimic a realistic environment, additive White Gaussian noise was introduced to the scattered data with a signal-to-noise ratio (SNR) of 30 dB.
Sampling in the longitudinal (z) direction was performed at intervals of , where is the wavelength at the corresponding frequency. The results of the two proposed scanning schemes discussed earlier are presented below for two challenging imaging scenarios.
Figure 2a illustrates the FEKO simulation setup for Simulation Example 1, where three linear cuboidal objects are positioned at radii
and
. Two of them are placed at
with angular positions
and
, while one is aligned at
along the
x axis.
Table 1 summarizes the parameters for this example.
To further examine the reconstruction performance, we simulate a more complex scenario example depicted in
Figure 2b, involving four objects. Simulation Example 2 involves a more complex arrangement with four distinct objects distributed across three radial surfaces, as compared to the simpler configuration in
Figure 2a. This example is included to further demonstrate the system’s capability to handle more intricate geometries and object distributions. The reconstruction results from Example 2 provide evidence of the method’s robustness in accurately localizing and resolving multiple targets under more challenging conditions. According to the parameters listed in
Table 2, two cuboids are located at
, one at
, and a more complex structure with two orthogonal arms is placed at
.
3.1. Results of Electronic Scanning Along Azimuthal Direction
Instead of employing a stationary array of
antennas along the azimuthal direction, the simulation setup involves rotating a transmitter and eight receiver antennas (
with reference to
Figure 1) 360 deg around the imaging domain with a step size of
, thereby emulating a
separation in a fixed array configuration. The chosen number of receiver antennas here is inspired by the work performed in [
21], where mechanical scanning was used to collect data along the
axis. The angular separation between receiver antennas is
deg, consistent with the stationary antenna configuration.
For image reconstruction, the regularization parameter
in Equation (
11) is chosen empirically, which is a common method (e.g., see [
29,
30]). To optimize the value of
, the quality of the reconstructed images is evaluated using the structural similarity (SSIM) index [
31].
In summary, SSIM is computed based on three terms: the luminance term, the contrast term, and the structural term. To find the optimal value of , SSIM is computed for the reconstructed images using the true object’s image as the reference. The true image has a value of 1 at the pixels overlapping the object and 0 elsewhere.
The overall SSIM is computed as the sum of SSIMs calculated for the individual two-dimensional (2D) images at the three radial positions in each image reconstruction process. Therefore, a higher value of total SSIM indicates a greater similarity to the true images.
Please note that this process needs to be performed for at least one set of known objects to optimize the regularization parameter. Here, we perform this for Simulation Example 1 and then use the optimized value for Simulation Example 2.
Table 3 shows the variation in total SSIM versus the value of the regularization parameter for Simulation Example 1.
It was observed that the most acceptable reconstruction quality occurs around
. As illustrated in
Figure 3a,b, using much higher or lower values such as
or
results in poor image reconstruction, where the object features are not clearly distinguishable. Thus, we present the results below using
.
Figure 4a presents the reconstructed images for Simulation Example 1. The results indicate successful localization and shape recovery of the targets. It is also evident that image resolution is superior on the outer surface at
mm compared to the inner surface at
mm. This improvement is attributed to enhanced accessibility and interaction with evanescent components in near-field holography.
The reconstructed images for Simulation Example 2 are displayed in
Figure 4b. The results demonstrate clear localization and differentiation of targets at
and
. For the object placed at
, the contrast is more pronounced along the
z axis, aligned with the
z-polarized dipole antenna response. As complexity increases, some imaging artifacts and shadowing are observed across adjacent radial surfaces.
3.2. Simulation Results of Electronic and Mechanical Scanning Along Azimuthal Direction
By adding a few mechanical scanning steps
and repeating the electronic scanning at each one of those steps, as discussed in
Section 2.1.2, the number of collected samples along the azimuthal direction is multiplied by
. With the consideration of the experimental setup discussed later, the overall number of 201 samples along the azimuthal direction is calculated and applied in the simulation.
Figure 5 shows the simulation results of this data acquisition scheme (201 samples along the
axis) for the two examples shown in
Figure 2. Comparing the reconstructed images in
Figure 4 and
Figure 5, it can clearly be observed that the qualities of the reconstructed images are enhanced and two common issues in the reconstruction of images (having object shadows on adjacent planes and spurious artifacts) have been reduced significantly, when a larger number of samples along the azimuthal axis has been acquired.
4. Experimental Results
Figure 6 illustrates the block diagram of the proposed imaging system. As shown, it consists of an array of antennas and two switching networks A and B to select the antennas, as discussed in
Section 2. The array elements are mini GSM/Cellular Quad-Band antennas from Adafruit [
32]. These antennas are a practical, affordable, and technically suitable choice for this microwave imaging system. They operate around 1.5–1.8 GHz, which matches the imaging system’s narrow-band frequencies and allows effective penetration into the glycerine–water medium. Their small size makes it easier to arrange many antennas around a cylindrical setup, achieving higher angular sampling rate. Also, we employ an Anritsu VNA, ShockLine-MS46122B model, for the measurements.
The scanning setup includes a plexiglass container with a diameter of 125 mm and a height of 200 mm, filled with a liquid consisting of 20% water and 80% glycerin. The liquid has properties of
and
S/m [
33]. This mixture has been chosen due to the similarities of its properties to the averaged tissue properties in biomedical applications [
33].
To mitigate the potential influence of the air–liquid interface on the measured signals, the antenna holder was custom designed to tightly accommodate the container and minimize the surrounding gap. This configuration reduces the potential of having interface-related distortions while preserving sufficient leeway to allow mechanical movement of the container along the azimuthal () and longitudinal (z) directions during the scanning process.
The positioning system, which includes an Arduino Uno board, an Arduino motor shield board, and a stepper motor, moves the liquid container along the longitudinal (z) direction. During the measurements, the antenna array remains stationary and is housed in a customized 3D-printed holder, ensuring a gap of 1 mm with the liquid container to allow smooth container movement. We use 36 antennas distributed evenly along the azimuthal direction, covering the full circle. To minimize unwanted cross-coupling between the antennas and reduce the impact of external electromagnetic interference, small microwave-absorbing sheets are placed inside the antenna array holder between adjacent antennas. Specifically, microwave-absorbing sheets with dimensions of 50 mm × 15 mm are inserted into the slots of the holder between each pair of adjacent antennas to reduce mutual coupling. Additionally, the outer surface of the holder is lined with a layer of microwave-absorbing sheet. To further improve shielding, the entire measurement setup is enclosed in a custom-built wooden box, which is also lined with microwave-absorbing material. This layered shielding approach ensures that the measured S-parameters are minimally affected by environmental noise, resulting in more accurate and consistent data for image reconstruction.
Figure 7 shows the variation in the scattering parameters of the antennas. As depicted,
Figure 7a shows the variation in the reflection scattering parameter for a sample antenna placed inside the antenna holder and in contact with the liquid container, while
Figure 7b shows the variation in the transmission scattering parameter measured for two sample antennas located at the opposite sides of the liquid container. While the figures show the variation over frequencies 1 GHz to 2 GHz, the imaging is performed using the data collected over 1.5 GHz to 1.8 GHz.
Figure 7 shows the acceptable performance of the antennas over this frequency range for imaging.
The selection of an antenna’s role as transmitter or receiver is controlled by the two switch networks of 1 × 18. Each network is implemented using an Arduino Uno board and three EV1HMC321ALP4E modules, which are RF SP8T switches from Analog Devices. Each network includes a master and two slave modules, controlled by MATLAB through its assigned Arduino Uno board.
Referring to the theory discussed earlier, to perform electronic scanning, the selection of antennas’ roles (transmitter or receiver) is determined such that, while one antenna from a network is selected as a transmitter, the corresponding eight antennas connected to the other network (on the opposite side of the imaged medium) act as receivers. The common ports of the switch networks are connected to the two ports of the VNA, and the transmission scattering parameter is measured for every pair of transmitter () and receiver () antennas () at each scanned height () and measured frequency ().
The assumption of identical antennas is not guaranteed in practice due to fabrication variations, connector mismatches, etc. In the previous work [
20], where mechanical scanning was used and each antenna had a fixed role, this issue did not cause significant effects. However, in this work, due to the dynamic assignment of the role of transmitter or receiver to different antennas during electronic scanning, compensation for these variations must be addressed. To overcome this issue, the raw responses of the antennas are pre-processed as
where
is the compensated response,
is the measured response with the object, and
is the response without an object.
The approximation of no-object data is obtained by analyzing the variation in the measured signal along the z-direction. It is assumed that regions with higher signal variation correspond to the positions of the objects, while regions with minimal variation are considered no-object zones. These low-variation regions are used as a reference to approximate the background response.
Figure 8 shows a photo of the experimental setup placed inside a shielding box. The PSFs are collected for objects positioned at radial distances of 20 mm, 35 mm, and 50 mm inside the liquid container, allowing reconstruction of the images on surfaces at these radii. The OUTs are plastic objects covered with thin copper sheets and placed inside the liquid container. Data acquisition is performed over the frequency range from 1.6 GHz to 1.75 GHz with steps of 0.05 GHz.
In order to test the proposed scheme in practice, four different measurement scenarios have been performed, as discussed below.
For the first Measurement Example, the OUTs are in the form of cylinders with a height of 50 mm and a diameter of 20 mm, placed at the cylindrical coordinates (
) of (35 mm, 290 deg, 0) and (50 mm, 180 deg, 0). The mechanical scanning along the
z axis is performed from −80 mm to 80 mm with 31 steps.
Figure 9a shows the reconstructed images of the positioned objects in the imaged medium. Despite the inevitable presence of environmental interferences and measurement noise, the objects are clearly distinguishable in the images.
For the second Measurement Example, the OUTs are small cuboids with dimensions of 20 mm × 20 mm × 8 mm, placed at the cylindrical coordinates (
) of (35 mm, 70 deg, 0), (50 mm, 180 deg, 0), and (50 mm, 250 deg, 0). The mechanical scanning along the
z axis is carried out from −50 mm to 50 mm in 19 steps. The result of the experiment is shown in
Figure 9b. As observed, the objects are reconstructed as expected in their correct positions. In this example, due to the larger number of OUTs, an increase in the level of artifacts is observed, as expected.
In the third measurement experiment, the proposed data acquisition scheme of the combination of electronic and mechanical scanning has been tested and verified practically. With the help of an additional stepper motor that rotates the container along the
axis with steps of 1.8 deg, and repeating the electronic scanning at each of these steps, 216 samples are collected along the azimuthal direction. The OUTs are in the form of cylinders with a height of 50 mm and a diameter of 20 mm, placed at the cylindrical coordinates (
) of (35 mm, −60 deg, 0) and (50 mm, 125 deg, 0).
Figure 10a shows the reconstructed images of the two objects. A comparison of the two sets of experimental results in
Figure 9 and
Figure 10 shows that the increase in the number of samples has a positive impact on the quality of the reconstructed images, helping to reduce the background artifacts significantly.
To further test the capability of this imaging approach, when using a combination of mechanical and electronic scanning, we perform imaging of a more complicated scenario (Measurement Example 4) in which a narrow and long arc-shaped object is placed on the middle imaged surface (at 36 mm) and along the azimuthal direction and another cuboid object similar to the ones used in the previous example is placed at (20 mm, 90 deg, 0).
Figure 10b shows the imaging results for this example. It is observed that the objects are reconstructed in their true positions. However, larger shadows of the arc-shaped object are observed on the adjacent imaged plane at 20 mm. We believe that this degradation of the image quality is due to the fact that this imaging technique is based on the Born approximation [
8] which provides better imaging results for smaller and lower-contrast objects (since it ignores multiple scattering between the objects).