This Case Study is made by the following student of VIT, PUNE
Name - Snehal Badhan
Roll no. - 14
Introduction:
Signal and image processing plays an important role in
every field. Signal processing basically deals with the operations on performed
on signals. We can extract the data from what we want from any signal in the
form of image using various image processing techniques.
When we talk of target detection and tracking it is very important in every field and one of the most important is in the military where many threats are present and without risking one’s life target is to be detected. There are various techniques and algorithms used for target detection and tracking and how signals are received and the targets are detected. Some of them are discussed below.
CASE STUDY TITLE 1: SIGNAL PROCESSING TO IMPROVE TARGET DETECTION
USING GROUND-PENETRATING RADAR (GPR)
This case study basically focuses on improving target
detection using GPR pre-processing tasks.
What is GPR?
Ground penetrating radar (GPR) is a non-intrusive
technique used to obtain information about the data below the surface of the
earth. The technique GPR relies upon the transmission of electromagnetic energy
into the earth. The fields such as archaeology, geology, civil engineering, and
military applications uses GPR technique for target detection. Detection of
buried landmines, road layer thickness measurement, depth of underground pipes,
and detection of chemical spills are some of the interesting applications where
GPR technique is been used.
Also, one of the limitation of GPR technique is that it can be very difficult for a non-expert user to extract information from the raw data.
Block Diagram of GPR
The GPR technique consists of five main components:
transmitter/receiver radar electronics, transmitter and receiver antenna
assembly, timing module, analogue sampling circuitry, and data acquisition. Below
shown is the block diagram of GPR:
Antenna Hardware and Operation
The GPR transmitter electronics produces a 1-2ns
pulse, which is transmitted and received via a pair of shielded bistatic
bow-tie antennas. In this case study the centre frequency of the pulse, as
determined by the dimensions of the antenna, is 800 MHz with a bandwidth
suitable for propagating through coal.
Equivalent Time Sampling
An equivalent time sampling technique is employed
which uses analogue electronics to acquire the received signal at a rate
significantly lower than direct sampling. An equivalent sampling frequency is
necessary so that the distance to a target can be estimated.
Data Acquisition
A falling edge synchronisation pulse is generated by
the analogue sampling electronics at the start of a new received waveform. The
synchronisation pulse is used by the acquisition software to form consecutive
data realisations. The data can then be ported into other signal processing
packages for further processing and analysis as necessary.
Data Processing in GPR
Several pre-processing techniques are described as
follows. These are important to simplify the interpretation of GPR data. These
basically include jitter correction, averaging (also referred to as stacking),
background signal removal, and time-varying gain.
Jitter Correction:
For the alignment of both the received and the
background signals Jitter Correction is implemented.
Averaging:
This technique is used to reduce the noise bandwidth
of the received signal.
Background Removal:
The background signal can be considered as the calibrated signal which can be observed even when the target is not present.
The background signal is then subtracted from the
received signal and thus resulting in a wavelet shape signal with time delay
proportional to the distance of the target.
Time-Varying Gain:
Sometimes, there is an effect of reducing the amplitude of
pulses which is caused due to targets are far away from the antennas. For the best results and
compensation of this effect, a non-linear gain is applied to the received waveform.
The time-varying gain function requires the addition of
two components, an exponential and a 4th power. The exponential component is
designed to maintain the close-range signal, while the other is to amplify the
attenuated signal at distances furthest from the antennas.
Matched Filter Based Detector:
The filter is used to detect when the signal component
of the received waveform is correlated with a reversed time shift of the
transmitted signal. The point of greatest correlation is taken as the
reflection from the target.
Transmitted Pulse Identification
Conclusion
The use of radar pre-processing has to lead to an
improvement in distance estimation even before formal processing has begun.
The limitation of the conventional matched filtering technique applied here is that only one target can be detected as the point of the highest correlation is taken as the reflection from the target.
GPR can also be used for:
Detecting voids and concrete homogeneity.
Helps in detecting environmental and natural
structures such as sinkholes, soil structures, water tables, saltwater
infiltration, and groundwater channels.
Measuring ice thickness which is important in areas
where ice roads exist for part of the year and arctic oil exploration.
Detecting underground storage tanks
Using GPR has many advantages including:
· No
health hazards
· Instant
results
· Provides
depth estimates
· Can
see through up to 2-feet of concrete
· Can see pipes below the floor
CASE STUDY TITLE 2: ONE-DIMENSIONAL
MORPHOLOGY-BASED METHOD FOR SELECTIVE TARGET DETECTION
Typical
images contain small targets surrounded by irregular backgrounds in a large
area, such as stars (target) with a nebula or a galaxy (interference or
background), as shown in (Figure a). A point spread function (PSF), expressed by
Equation (3), can be employed to approximate a small target, which is basically
a connected area with a decrease in brightness from the target centre to its
edge, as expressed by a Gaussian distribution
Image properties in the spatial domain and the frequency domain: (a) original image with stars of different sizes, as well as a nebula and a galaxy; FFT results of (b1) the original image, (b2) single-pixel noise, (b3) background noise, and (b4) targets. Centers and edges of the FFT results correspond to lower and higher frequencies, respectively. Illustration of RbR image processing for targets in row i with different sizes: (c1) extraction of a target with a larger size and (c2) extraction of a target with a smaller size. Insets are the zoom-in view of the extracted targets in a. where I0 is
the total energy pertaining to the target, (x0, y0)
is the expected center of the target and σ is the Gaussian
radius, which is related to the concentration of the PSF energy distribution. There
are different types of noise and interference within an image containing the
desired small target, and their spatial scales are chosen as the criterion for
classification. The image background, large scale noise such as fixed pattern
noise comparable to the whole image in spatial scale, and large-scale
interferences are all treated as background noise. Figure 2b explicitly shows
the composition of an image with N rows and N columns
in the frequency domain. The center and edge correspond to the lower frequency
and higher frequency, respectively, and the intensity is the logarithmic value
of the fast Fourier transform (FFT). When performing the FFT on a 2D image, the
1D FFT of each row is taken to form an intermediate image, followed by the 1D
FFT of each column in the intermediate image. the desired target signal is overwhelmed
by the background noise, whose FFT result, shown in Figure 2b3, features dominant low-frequency components due to the continuous distribution of the background noise
signal. After filtering all undesired parts from the original image, the FFT
result of the desired targets with size K is plotted in Figure 2b2 with small
components ranging from low frequency to intermediate frequency.
Image
processing was achieved by a mathematical morphology-based image processing
approach. Erosion and dilation are two basic operations in mathematical
morphology. |
where f(x, y) and h(x, y) are set to represent the gray value (energy intensity) of images f and h at a certain point (x, y), respectively. b is the SE, Db is the domain of b, and Df is the domain of f.
Erosion can be used to
remove the single-pixel noise or smaller objects in the image, while through a
combination of erosion and dilation, background noise can also be obtained for
target enhancement.
CASE STUDY TITLE 3: TARGET DETECTION AND
TRACKING OF MOVING OBJECTS FOR CHARACTERIZING LANDSLIDE DISPLACEMENTS FROM
TIME-LAPSE TERRESTRIAL OPTICAL IMAGES
TDT methods are used to estimate the displacements of
discrete features over time, either natural (rock blocks, large fractures) or
man-made (benchmarks). The selected objects should stand out by their
radiometric properties and ensure their effective and accurate detection. The
main advantage of TDT methods over image correlation techniques is the ability
to measure complex displacement patterns over space and time for large
deformation, high signal-to-noise ratios, changes in the target's shape and the
lag of images over time for low view angles.
Algorithm of TDT Method
Step 1: Image registration
Accurate image co-registration is a key element in the
application of change detection methods because it determines the reliability
of the displacement estimates. Image co-registration generally consists of
correcting the camera motion induced by wind or temperature variations and
transferring each image of the time series into the geometry of the reference
image.
Image registration basically is performed using four
methods:
1) Detection
of time invariant points in the image: e Harris corner detector
algorithm is used because it is computationally more efficient for studies that
use fixed cameras. It is based on the first order image derivatives in the x–y
directions in gray-scale images. A cross-correlation in the Fourier domain is
then performed on the Harris corner point coordinates to attain a matching
resolution of 0.1 pixel.
2) Feature
matching: This stage consists of establishing the correspondence between the
invariant points on the complete image time series. Commonly matched points are
then correlated and points that are strongly correlated in both x–y directions
are paired together.
3) Estimation
of the mapping model: Estimates the best fit of the harris corner point pairs
in the image time series. The most appropriate model is chosen by comparing
different (affine, projective, polynomial non-reflective, reflective similarity)
4) Projection
of the object coordinates: This approach avoids errors due to image
interpolation and resampling during the projection, preserves the radiometry of
the image and reduces the processing time
Step 2: Automated feature detection and tracking
The larger the size, the greater the probability that
the object can be detected in the search window but also that it can be mixed
with other objects. Then a background image is then constructed by applying a
rank-order filter in which each pixel is replaced with its darkest neighboring
pixel. This mathematical morphological operation, called “erosion”, only
retains the large trend of the initial image. A new thumbnail is then created
by subtracting the eroded image from the initial image. Radiometric stretching
is applied to produce grayscale intensities ranging between 0 and 255. This
operation, called “opening”, enhances the contrast, allows better object
detection by thresholding, and compensates for changes in the illumination
conditions. A binary image is created by applying the Otsu method, which
minimizes the grayscale variance inside the two classes assumed to make up the
image.
Step 3: 3D photogrammetric restitution
External orientations of the cameras are then
computed. In the case of stereo- (or multiple) views, the 3D restitution is
performed by stereoscopy. With the camera orientation information, it is then
possible to determine the local coordinates (X,Y,Z) of an object from two pairs
of coordinates.
Conclusion:
Target Detection and Tracking (TDT) method that is
based on simple binary image processing and is designed as a complementary
technique to image correlation. This method allows tracking natural or man-made
targets in a time series of images.
the TDT approach does not provide spatially continuous information, it provides 1) a quantification of the object displacements at the same order of precision as image correlation (sub-pixel accuracy) and 2) information in regions where image correlation fails because of too large ground displacements. A sensitivity analysis reveals that the major sources of uncertainty are camera movement and/or lens distortion and not the TDT method itself.
References:
2.
https://www.nature.com/articles/lsa20186
3.
https://www.sciencedirect.com/science/article/abs/pii/S001379521400009X
5.
https://www.hindawi.com/journals/js/2017/8231314/
6.
https://pubmed.ncbi.nlm.nih.gov/33203032/
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