The present disclosure pertains generally to near-field microwave imaging.
In the art of microwave detection, near-field microwave imaging attempts to detect the profile of an object less than one wavelength to several wavelengths away from the antennas by measuring an electromagnetic scattered field. Typically, many antennas are placed near the object and antennas take turns transmitting a waveform that illuminates the object, while the other antennas serve as receivers. Alternatively, the detection can use a small number of movable antennas to observe the object in multiple locations. After detection, an algorithm is applied to process the collected data to form an image displaying the object's profile. Typical applications are buried-object detection, nondestructive surveys, and biomedical examinations.
There are two main approaches to active microwave imaging: microwave tomography and RADAR-based imaging. Microwave tomography involves reconstructing an image in terms of a quantitative description of any objects present such as a dielectric constant or conductivity, impedance, or local velocity. This approach usually is ill posed and is performed by iteratively comparing measurement data with numerical simulation data, which can be a slow and time consuming process. In contrast to microwave tomography, RADAR-based imaging methods reconstruct an image in terms of a qualitative description of any objects present and instead aim to find the profile of an object. More specifically, the purpose of a RADAR-based method is to distinguish the object's size, shape, and location instead of showing a distribution of a physical parameter in the entire area.
A discussion of time domain confocal imaging algorithms is disclosed in “A Confocal Microwave Imaging Algorithm for Breast Cancer Detection” by Xu Li et al. in IEEE Microwave and Wireless Components Letters, Vol. 11, No. 3, March 2001 and “Enhancing Breast Tumor Detection with Near-Field Imaging” by Elise C. Fear et al. in IEEE Microwave Magazine, March 2002. The entire contents of these publications are incorporated herein by reference for such techniques as well as systems, methods and other techniques related to microwave imaging.
The present inventive concepts, titled phase confocal method (PCM), belong to a RADAR-based imaging approach. Unlike previous RADAR-based approaches which operate in the time domain, the present method processes signals in the frequency domain. While the conventional RADAR-based approaches calculate the time delay of a signal in the time-space domain, the present inventive concepts calculate a phase delay (or a phase shift) in the frequency-space domain. There is often a demand to detect objects existing in a dispersive medium in which the wave propagation speed varies with frequency. For example, in biomedical microwave detection, human-body tissue is dispersive at microwave frequencies and in ground-penetration detection, soil is a dispersive medium. In these scenarios, components of different frequencies in the UWB signal spectrum will take different paths across the air-medium interface and propagate at different speeds in the medium. The conventional RADAR-based approaches calculate the UWB signal flight time between the sensor and the object, which requires that the distance and speed are correctly estimated. However, the conventional approaches assume that many frequency components in the UWB signal travel together—they take the same path and travel with the same speed. This approximation leads to an inaccurate flight time estimation, and finally degrades the image quality. In the present method, phase delay instead of time delay is calculated and utilized to shift the phase of the acquired signal at each frequency. By treating each frequency individually an accurate delay (or shift) is found and utilized. Therefore, the present method is able to fully take advantage of the UWB spectrum.
The present inventive concepts allow using the phase information alone, or alternatively a combination with amplitude information to reconstruct an image. When using the phase information only, all the phase signals are assumed as unit vectors whose magnitude is unity. As the phase delay of all signals are correctly compensated (shifted), in the locations an object is present, the shifted phase signals will have a very small difference. In those positions where no object is present, there will be large differences between these shifted phase signals. Next, two methods are proposed to calculate the pixel values to form an image. In the first, when both phase information and amplitude information are used, the phase-shifted signals are summed following the principle of vector addition. In the second method, the 2-D distance from the unit vectors to their average value is implemented to compute the pixel value of an image. The data processing is in the frequency domain and the signals are treated as complex numbers, which is different from a conventional algorithm that processes real numbered data in the time domain. PCM can reconstruct an image using a single frequency signal and also multiple frequency signals. PCM also has the advantage of being able to accurately estimate the contribution of multiple frequency components. Although the present method processes data in the frequency domain, experiments can be performed in the time domain and converted to the frequency domain by a Fourier transform.
Embodiments will now be described in more detail with reference to the accompanying drawings, given only by way of example, in which:
The measurement process can be carried out either in the time domain or in the frequency domain. When measurements are carried out in the time domain, a system as illustrated in
When measurements are carried out in the frequency domain, a system as illustrated in
The antenna arrangement in
There are some advantages and disadvantages to collecting data in either the time domain or the frequency domain. An advantage of a time domain measurement over a frequency domain measurement is that a reconstruction algorithm based on time domain data employs the scattered field of the object over an entire wideband rather than a few selected discrete frequencies. As such, high resolution is better able to be achieved in the reconstructions. A downside of a time domain measurement over a frequency domain measurement is that time domain signals are often distorted in shape as they propagate in a dispersive and/or lossy medium. This may degrade the image quality in the reconstruction. An advantage of a frequency domain measurement is that the signal-to-noise ratio is usually better than that in the time domain.
Unlike other methods the present inventive concepts can use data recorded from a VNA directly. When the measurement is executed by the system in
A discussion of S parameters is contained in “Microwave Engineering”, 3rd edition, by David M. Pozar, which is incorporated by reference in its entirety for the discussion of such parameters.
The first step 401 is to perform any calibration necessary prior to data collection. The second step 402 is to collect the electromagnetic signal using the system of
where ν is the wave speed travelling in air. The phase delay between two antennas is
where λ is the wavelength. Assuming the same antennas are utilized for 104 and 105, by a simple transmission-reception test, the time delay in one antenna (from the antenna's port 501 to the antenna's end 503, or 504 to 502) can be calculated as
where T denotes the time shift between the measured output signal and input signal, and
A similar method can be used to calculate the phase delays in the antenna which can be written as
where Φ denotes the phase difference between the output signal and input signal, and
With this approach accurate time shifts of waves propagating in a medium (from antenna end 503 to antenna end 504) in real detections can be obtained by T′−(T−t), or phase shifts by Φ′−(Φ−φ), where T′ and Φ′ is the measured shift in real detections from 501 to 502. In some embodiments the calibration step 401 can be performed after the data collection step 402.
Step 403 involves obtaining scattered signals by a subtraction process. The path that a signal travels from one of the M locations to one of the N reception locations is called a channel. In each channel, by subtracting the incident field from the total field, the scattered field of the object is obtained and saved in an M×N matrix, representing the measured results for corresponding transmission locations and reception locations.
In step 404 the electrical distances from receivers to focal points and then to transmitters is calculated. This distance can in some cases include the physical distance from receivers to focal points and then from the focal points to transmitters which can be calculated by using the Euclidean distance formula and knowing the Cartesian coordinates. The electrical distance calculation can be elaborated with the help of
In step 405, the phase change of the wave as it propagates is calculated by using the equation
at a particular frequency.
for each channel. The phase of the obtained signals will rotate back by
counterclockwise, as if all the signals back-propagate to their initial position. As a result, when the computation focuses on a focal point like 602 where the object is present and the wave really scattered at this focal point, the phase of all the signals will return to their common initial phase after phase compensation (the phases are coherent), as shown in
In the m-n channel, where the phase of the signal collected by the nth receiver is ψmn, the phase after compensation (back-propagating to the transmitter's place) ψ′mn is
ψ′mn=ψmn+Δψmn
Δψmn is the phase delay in air, that is, the phase delay to the focal point based on distance.
In step 406 a decision is made if there is single frequency or multiple frequency data that has been collected. If single frequency data is collected then the signals are synthesized in step 407. If multiple frequency data is collected, then a check is made to determine if this is the last frequency applied in step 409. The last frequency is the highest frequency present in a set of multiple frequencies. If the last frequency is not yet reached, then in step 410 the current data is saved and the next frequency is selected. Then step 404 is started with the next frequency. If the last frequency is applied, then the signals at all frequencies are synthesized in step 411.
If the detection uses a single frequency (step 407), a total of M×N signals (M×N complex numbers) will be synthesized to calculate the pixel value at each focal point, and an image showing the entire distribution can be produced.
Theoretically, the compensated phase values LP′ are expected to be identical in all channels, if the same detection signal was used by the transmitters. In the present invention, two separate methods are developed to synthesize signals. In both methods, the complex-number signals are treated as vectors. The first method to synthesize signals is vector addition. In
The second method to synthesize the M×N signals is relatively complex, but is more likely to achieve a better performance. In this method, the magnitude of the complex-number signals is completely ignored such that all of the signals are thought of as unit vectors only. Then, instead of an addition computation, the average of the squared distance from all unit vectors to their mean position is computed. As an example,
The variable dm,n is the average of the squared distance from all unit vectors to their mean position for each of the M×N signals. The mean position of M×N signals
in the Cartesian coordinates can be written in another form:
where ψm,n is the phase of the M×N signals. A simpler statistic form can be used to show what is calculated:
Q({right arrow over (r)})=σ2(Cos(ψ′m,n))+σ2(Sin(ψ′m,n))
where σ2 represents a variance computation. As a result, in locations where an object is present, a small variance value is present and can be converted to a large pixel value in the image by a reciprocal computation:
P({right arrow over (r)}) will be the pixel value of the image in the position {right arrow over (r)}.
The PCM uses the phase of S (when measuring with a VNA) which actually represents the phase change from the port of transmitter 104 to the port of receiver 105, if the VNA is calibrated correctly in advance. More specifically, the phase change consists of five parts: phase change in the connector on the transmitter end (ΦTC), phase change in the transmitter antenna (ΦT), phase change of propagation in space (Δψspace), phase change in the receiver antenna (ΦR), and phase change in the connector on the receiver end (ΦRC). The total phase change is represented in the following equation:
ΔΦ=ΦTC+ΦT+Δψspace+ΦRC+ΦR
In single frequency detection, since ΦTC, ΦT, ΦRC, ΦR are fixed in all channels, there is only a need to compensate the phase change in space, i.e., Δψspace. There is no need to know the other four terms, nor are they used in the single-frequency PCM.
When multiple frequencies or a UWB signal is applied, the phase delay for each frequency component will take turns being calculated and compensated. The phase delay in the connectors and antennas (ΦTC+ΦT,ΦRC+ΦR) varies with frequency, so these four terms have to be taken into account in the phase compensation when applying multiple-frequency PCM. As a result, ΔΦ containing five parts will all be applied in the phase compensation step in multiple-frequency PCM instead of only using Δψspace as in single-frequency PCM. The value of ΦTC+ΦT and ΦRC+ΦR can be found by a simple test on the VNA in advance of the data collection.
When the object is buried or existing in a dispersive medium (human body tissues, etc.), the present method is able to accurately estimate the contribution of every frequency component. It is known that wave propagation speed varies with frequency in a dispersive medium and refraction rate varies with frequency as well.
The approach that synthesizes the signals from all channels and all frequencies (Step 411) is similar to the single frequency case. The only difference is that it will have L×M×N signals to process, where L is the number of frequencies applied. The multiple frequency equation to synthesize signals is:
Q({right arrow over (r)})=σ2(Cos(ψ′mnl))+σ2(Sin(ψ′mnl))
When the measurement is made in the frequency domain, it is assumed all frequency components have the same initial phase. Thus, the phases from all channels and all frequencies are expected to be correlated after the phase compensation step when the focal point falls in the object's location. If the measurement is taken in the time domain, the initial phases of frequency components in a UWB signal are usually unequal. Thus, an additional step that subtracts the initial phases of the frequency components in the UWB signal from the compensated phases must be taken into account in the multiple-frequency method.
After the single frequency and multiple frequency step of synthesizing the signals is complete (steps 407 and 411 respectively) then an image is constructed using the synthesized data in steps 408 or 412 respectively. The vector addition method linearly converts the output to a pixel value to form an image. The image is constructed using the previously presented equation for P({right arrow over (r)}) in the variance method.
Unlike other RADAR-based algorithms using magnitudes such as the conventional Delay and Sum (DAS) that usually adds a weight term for all signals to compensate for the decay in propagation, the inventive algorithm does not require this kind of compensation. There is no need to consider the antennas' gains pattern in PCM, which is often required in methods that use magnitudes. This reduces the likeliness of causing artificial errors and also avoids any additional steps for antenna-factor calibration.
Another advantage of the present method is its efficiency. The total processing time, including phase estimation and compensation, multiple channels and multiple frequencies synthesis, and an image buildup only takes a couple of seconds on a regular personal computer. This efficiency is better than existing microwave imaging approaches. If speedup in data collection can be achieved (by means of appropriately increasing the number of antennas) and a super computer is available to run the invented method, a real-time microwave image is feasible.
The invention is not limited to the embodiments described above. Many other variations of the invention are possible and depend on the particular requirements at hand. This invention may also be used in ultra-sonic imaging and many other scenarios. Such variations and different application areas are within the scope and spirit of the invention. The invention is therefore defined with reference to the following claims.
This application claims priority to U.S. Provisional Application No. 62/347,798, filed Jun. 9, 2016, whose entire contents are incorporated herein by reference.
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