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This PDF file contains the front matter associated with SPIE Proceedings Volume 8365, including the Title Page, Copyright information, Table of Contents, and the Conference Committee listing.
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Traditional compression involves sampling a signal at the Nyquist rate, then reducing the signal to its essential
components via some transformation. By taking advantage of any sparsity inherent in the signal, compressed
sensing attempts to reduce the necessary sampling rate by combining these two steps. Currently, compressive
sampling operators are based on random draws of Bernoulli or Gaussian distributed random processes. While
this ensures that the conditions necessary for noise-free signal reconstruction (incoherence and RIP) are fulfilled,
such operators can have poor SNR performance in their measurements. SNR degradation can lead to poor reconstruction despite using operators with good incoherence and RIP. Due to the effects of incoherence-related signal
loss, SNR will degrade by M/K compared to the SNR of the fully sampled signal (where M is the dimensionality
of the measurement operator and K is the dimensionality of the representation space).
We model an RF compressive receiver where the sampling operator acts on noise as well as signal. The signal
is modeled as a bandlimited pulse parameterized by random complex amplitude and time of arrival. Hence, the
received signal is random with known prior distribution. This allows us to represent the signal via Karhunen-Loeve expansion and so investigate the SNR loss in terms of a random vector that exists in the deterministic KL basis. We are then able to show the SNR trade-off that exists between sampling operators based on random
matrices and operators matched to the K-dimensional basis.
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A rich body of literature has emerged during the last decade that seeks to exploit the sparsity of a signal for a reduction in
the number of measurements required for various inference tasks. Much of the initial work in this direction has been for the
case when the measurements correspond to a projection of the signal of interest onto the column space of (sub)Gaussian
and subsampled Fourier matrices. The physics in a number of applications, however, dictates the use of "structured"
matrices for measurement purposes. This has led to a recent push in the direction of structured measurement (or sensing)
matrices for inference of sparse signals. This paper complements some of the recent work in this direction by studying
the geometry of Toeplitz-block sensing matrices. Such matrices are bound to arise in any system that can be modeled as
a linear, time-invariant (LTI) system with multiple inputs and single output. The reported results therefore should be of
particular benefit to researchers interested in exploiting sparsity in LTI systems with multiple inputs.
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We suggest and explore a parallelism between linear block code parity check matrices and binary zero/one
measurement matrices for compressed sensing. The resulting family of deterministic compressive samplers renders
itself to the development of eective and ecient recovery algorithms for sparse signals that are not ℓ1-based.
Experimental results that we include herein demonstrate the utility of the presented developments.
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We present several improvements to published algorithms for sparse image modeling with the goal of
improving processing of imagery of small watercraft in littoral environments. The first improvement
is to the K-SVD algorithm for training over-complete dictionaries, which are used in sparse
representations. It is shown that the training converges significantly faster by incorporating multiple
dictionary (i.e., codebook) update stages in each training iteration. The paper also provides several
useful and practical lessons learned from our experience with sparse representations. Results of three
applications of sparse representation are presented and compared to the state-of-the-art methods; image
compression, image denoising, and super-resolution.
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Compressive Sensing for Spectral Imaging and Medicine
The Code Aperture Snapshot Spectral Imaging system (CASSI) senses the spectral information of a
scene using the underlying concepts of compressive sensing (CS). The random projections in CASSI are
localized such that each measurement contains spectral information only from a small spatial region of
the data cube. The goal of this paper is to translate high-resolution hyperspectral scenes into compressed
signals measured by a low-resolution detector. Spatial super-resolution is attained as an inverse problem
from a set of low-resolution coded measurements. The proposed system not only offers significant savings
in size, weight and power, but also in cost as low resolution detectors can be used. The proposed system
can be efficiently exploited in the IR region where the cost of detectors increases rapidly with resolution.
The simulations of the proposed system show an improvement of up to 4 dB in PSNR. Results also show
that the PSNR of the reconstructed data cubes approach the PSNR of the reconstructed data cubes
attained with high-resolution detectors, at the cost of using additional measurements.
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We present an architecture for rapid spectral classification in spectral imaging applications. By making use of knowledge
gained in prior measurements, our spectral imaging system is able to design adaptive feature-specific measurement
kernels that selectively attend to the portions of a spectrum that contain useful classification information. With
measurement kernels designed using a probabilistically-weighted version of principal component analysis, simulations
predict an orders-of-magnitude reduction in classification error rates. We report on our latest simulation results, as well
as an experimental prototype currently under construction.
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Focal plane arrays with associated electronics and cooling are a substantial portion of the cost, complexity, size, weight,
and power requirements of Long-Wave IR (LWIR) imagers. Hyperspectral LWIR imagers add significant data volume
burden as they collect a high-resolution spectrum at each pixel. We report here on a LWIR Hyperspectral Sensor that
applies Compressive Sensing (CS) in order to achieve benefits in these areas.
The sensor applies single-pixel detection technology demonstrated by Rice University. The single-pixel approach uses a
Digital Micro-mirror Device (DMD) to reflect and multiplex the light from a random assortment of pixels onto the
detector. This is repeated for a number of measurements much less than the total number of scene pixels. We have
extended this architecture to hyperspectral LWIR sensing by inserting a Fabry-Perot spectrometer in the optical path.
This compressive hyperspectral imager collects all three dimensions on a single detection element, greatly reducing the
size, weight and power requirements of the system relative to traditional approaches, while also reducing data volume.
The CS architecture also supports innovative adaptive approaches to sensing, as the DMD device allows control over the
selection of spatial scene pixels to be multiplexed on the detector.
We are applying this advantage to the detection of plume gases, by adaptively locating and concentrating target energy.
A key challenge in this system is the diffraction loss produce by the DMD in the LWIR. We report the results of testing
DMD operation in the LWIR, as well as system spatial and spectral performance.
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Compressive Sensing (CS) is an emerging data acquisition scheme with the potential to reduce the number
of measurements required by the Nyquist sampling theorem to acquire sparse signals. We recently used the
interbeat correlation to find the common support between jointly sparse adjacent heartbeats. In this paper, we
fully exploit this correlation to find the magnitude, in addition to the support of the significant coefficients in
the sparse domain. The approach used for this purpose is based on sparse Bayesian learning algorithms due to
its superior performance compared to other reconstruction algorithms and the fact that being a probabilistic
approach facilitates the incorporation of correlation information. The reconstruction includes, in the first place,
the detection of the R peaks and the length normalization of ECG cycles to take advantage of the quasi-periodic
structure. Since the common support reduces as the number of heartbeats increases, we propose the
use of a sliding window where the support maintains approximately constant across cycles. The sparse Bayesian
algorithm adaptively learns and exploits the high correlation between the heartbeats in the constructed window.
Experimental results show that the proposed method reduces significantly the number of measurements required
to achieve good reconstruction quality, validating the potential of using correlation information in compressed
sensing-based ECG compression.
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Compressive sensing (CS) is an emerging signal processing paradigm that enables sub-Nyquist sampling of
sparse signals. Extensive previous work has exploited the sparse representation of ECG signals in compression
applications. In this paper, we propose the use of wavelet domain dependencies to further reduce the number
of samples in compressive sensing-based ECG compression while decreasing the computational complexity. R
wave events manifest themselves as chains of large coefficients propagating across scales to form a connected
subtree of the wavelet coefficient tree. We show that the incorporation of this connectedness as additional prior
information into a modified version of the CoSaMP algorithm can significantly reduce the required number of
samples to achieve good quality in the reconstruction. This approach also allows more control over the ECG
signal reconstruction, in particular, the QRS complex, which is typically distorted when prior information is
not included in the recovery. The compression algorithm was tested upon records selected from the MIT-BIH
arrhythmia database. Simulation results show that the proposed algorithm leads to high compression ratios
associated with low distortion levels relative to state-of-the-art compression algorithms.
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High resolution sensors are required for recognition purposes. Low resolution sensors, however, are still widely
used. Software can be used to increase the resolution of such sensors. One way of increasing the resolution of
the images produced is using multi-frame super resolution algorithms. Limitation of these methods are that the
reconstruction only works if multiple frames are available furthermore these algorithms decreases the temporal
resolution. In this paper we use a sparse representation of an overcomplete dictionary to significantly increase
the resolution of a single low resolution image. This allows for a higher resolution gain and no loss in temporal
resolution. We demonstrate this technique to improve the resolution of number plates images obtained from a
near infrared roadside camera.
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We present an approach for classifying chart images with sparse coding. Three chart categories are considered:
bar charts, pie charts and line graphs. We introduce the Laplacian of Gaussian (LoG) to smooth noise in the
image and detect candidate regions of interest. Noting that charts typically contain both text and graphics, we
identify text and graphic regions and learn informative features from them. Each image is then represented by
a feature vector, which can be used to learn a sparse representation via the dictionary learning algorithm for
classification. We evaluate the proposed systematic approach by a set of charts drawn from the internet. The
encouraging results certifies the proposed method.
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Sparse representation based classification (SRC) has achieved state-of-the-art results on face recognition. It is
hence desired to extend its power to a broader range of classification tasks in pattern recognition. SRC first
encodes a query sample as a linear combination of a few atoms from a predefined dictionary. It then identifies the
label by evaluating which class results in the minimum reconstruction error. The effectiveness of SRC is limited
by an important assumption that data points from different classes are not distributed along the same radius
direction. Otherwise, this approach will lose their discrimination ability, even though data from different classes
are actually well-separated in terms of Euclidean distance. This assumption is reasonable for face recognition as
images of the same subject under different intensity levels are still considered to be of same-class. However, the
assumption is not always satisfied when dealing with many other real-world data, e.g., the Iris dataset, where
classes are stratified along the radius direction. In this paper, we propose a new coding strategy, called Nearest-
Farthest Neighbors based SRC (NF-SRC), to effectively overcome the limitation within SRC. The dictionary is
composed of both the Nearest Neighbors and the Farthest Neighbors. While the Nearest Neighbors are used
to narrow the selection of candidate samples, the Farthest Neighbors are employed to make the dictionary
more redundant. NF-SRC encodes each query signal in a greedy way similar to OMP. The proposed approach
is evaluated over extensive experiments. The encouraging results demonstrate the feasibility of the proposed
method.
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We have designed and built a working automatic progressive sampling imaging system based on the vector sensor
concept, which utilizes a unique sampling scheme of Radon projections. This sampling scheme makes it possible to
progressively add information resulting in tradeoff between compression and the quality of reconstruction. The
uniqueness of our sampling is that in any moment of the acquisition process the reconstruction can produce a reasonable
version of the image. The advantage of the gradual addition of the samples is seen when the sparsity rate of the object is
unknown, and thus the number of needed measurements. We have developed the iterative algorithm OSO (Ordered Sets
Optimization) which employs our sampling scheme for creation of nearly uniform distributed sets of samples, which
allows the reconstruction of Mega-Pixel images. We present the good quality reconstruction from compressed data ratios
of 1:20.
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In this paper we propose a method to acquire compressed measurements for efficient video reconstruction using a single pixel camera. The method is suitable for implementation using a single pixel detector along with digital micromirror device (DMD) or other forms of spatial light modulators (SLMs). Normal implementations of single pixel cameras are able to compress the spatial dimensions but the fact that it needs to make measurements in a sequential manner before the scene changes makes it inefficient for video imaging. In this paper we discuss a measurement scheme that exploits sparsity along the time axis. After acquiring all measurements required for the first frame, measurements are only acquired from the areas which change in subsequent frames. Segmentation of the first frame is performed and change detection is performed on each segmented area. Compressed measurements are only made for changing segments. We show the reconstruction results for a few test sequences commonly used for performance analysis.
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We consider a coded aperture imaging system which collects far fewer measurements than the underlying resolution of
the scene we wish to exploit. Our sensing model considers an imaging system which subsamples pixels intensities with a
Spatial Light Modulator (SLM) device. We present a general approach that can be applied to compressively sensed
measurements gathered with respect to our sensing model, in order to improve reconstruction quality beyond a general
reconstruction algorithm. The approach exploits capturing overlapping subsequent frames in a panning camera scene or
capturing novel compressively sensed measurements of the static camera scene by utilizing dynamic aperture codes. We
also consider the effects of projective distortions from various camera positions of subsequent frames within our
approach. The result is a decrease in the effective compression rate of the system and therefore a significantly improved
compressively sensed reconstruction. Results are presented for various reconstruction algorithms on natural, man-made,
and mixed scenery of panning camera scenery as well as static camera scenery.
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We consider a video acquisition system where motion imagery is captured only by direct compressive sampling
(CS) without any other form of intelligent encoding/processing. In this context, the burden of quality video
sequence reconstruction falls solely on the decoder/player side. We describe a video CS decoding method that
implicitly incorporates motion estimation via sliding-window sparsity-aware recovery from locally estimated
Karhunen-Loeve bases. Experiments presented herein illustrate and support these developments.
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The framework of computing Higher Order Cyclostationary Statistics (HOCS) from an incoming signal has
proven useful in a variety of applications over the past half century, from Automatic Modulation Recognition
(AMR) to Time Dierence of Arrival (TDOA) estimation. Much more recently, a theory known as Compressive
Sensing (CS) has emerged that enables the ecient acquisition of high-bandwidth (but sparse) signals via nonuni-
form low-rate sampling protocols. While most work in CS has focused on reconstructing the high-bandwidth
signals from nonuniform low-rate samples, in this work, we consider the task of inferring the modulation of a
communications signal directly in the compressed domain, without requiring signal reconstruction. We show
that the HOCS features used for AMR are compressible in the Fourier domain, and hence, that AMR of various
linearly modulated signals is possible by estimating the same HOCS features from nonuniform compressive sam-
ples. We provide analytical support for the accurate approximation of HOCS features from nonuniform samples
and derive practical rules for classication of modulation type using these samples based on simulated data.
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Tracking the shallow water acoustic channel in real time poses an open challenge towards improving the data rate
in high-speed underwater communications. Multipath arrivals due to reflection from the moving ocean surface
and the sea bottom, along with surface wave focusing events, lead to a rapidly fluctuating complex-valued channel
impulse response and associated Delay-Doppler spread function that follow heavy-tailed distributions. The sparse
channel or Delay-Doppler spread function components are difficult to track in real time using popular sparse
sensing techniques due to the coherent and dynamic nature of the optimization problem as well as the timevarying
and potentially non-stationary sparseness of the underlying support. We build on related work using
non-convex optimization to track the shallow water acoustic channel in real time at high precision and tracking
speed to develop strategies to estimate the non-stationary sparseness of the underlying support. Specifically, we
employ non-convex manifold navigational techniques to estimate the support sparseness to balance the weighting
between the L1 norm of the tracked coefficients and the L2 norm of the estimation error. We explore the efficacy
of our methods against experimental field data collected at 200 meters range, 15 meters depth and varying wind
conditions.
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Underwater acoustic channels have rich selectivity in time, frequency, space and Doppler. These channel features
need to be properly modeled and captured for eective channel equalization and data communication. However,
estimation of high-dimensional acoustic channels entails heavy implementation costs, in terms of computational
load, processing time and the number of data samples required for eective equalization. Compressed sensing
oers a new paradigm for sparse channel estimation by collecting a small number of samples via random pro-
jections. Each random projection captures and (equally) weights in all components in the search space, without
relying on any structural knowledge of the search space. On the other hand, some physics-based waveguide
knowledge can be available for underwater acoustic channels, which can constrain both the number of arrivals
and the range of their angles of arrival at a receiver based on the source-receiver geometry and water column,
surface, and bottom properties. A structure-based projection approach is hence motivated for data sampling
and channel reconstruction. Balancing between structured versus random projections, this paper develops new
compressed sensing algorithms under partial structural knowledge that is obtained from a geometric model of
the propagation channels. Simulations conrm the benets of partially-structured random projections in terms
of both improved recovery performance and reduced sampling costs.
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In this paper, compressive sensing strategies for interception of Frequency-Hopping Spread Spectrum (FHSS)
signals are introduced. Rapid switching of the carrier among many frequency channels using a pseudorandom
sequence (unknown to the eavesdropper) makes FHSS signals dicult to intercept. The conventional approach to
intercept FHSS signals necessitates capturing of all frequency channels and, thus, requires the Analog-to-Digital
Converters (ADCs) to sample at very high rates. Using the fact that the FHSS signals have sparse instanta-
neous spectra, we propose compressive sensing strategies for their interception. The proposed techniques are
validated using Gaussian Frequency-Shift Keying (GFSK) modulated FHSS signals as dened by the Bluetooth
specication.
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Compressive sensing (CS) techniques have shown promise for subsurface imaging applications using wideband
sensors such as stepped-frequency ground-penetrating radars (GPR). Excellent images can be computed using
the CS techniques. However, the problem size is severely limited for 3-dimensional imaging problems which seem
to require an explicit representation matrix that involves six dimensions. This paper shows how the underlying
propagation model leads to a block-Toeplitz structure in two of the dimensions which can be exploited to reduce
both the storage and computational complexity. The reduction by three orders of magnitude in computational
resources for the CS problem will make 3-dimensional imaging applications feasible.
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In this paper, we consider moving target detection and localization inside enclosed structures for through-the-wall radar
imaging and urban sensing applications. We exploit the fact that the through-the-wall scene is sparse in the Doppler
domain, on account of the presence of a few moving targets in an otherwise stationary background. The sparsity property
is used to achieve efficient joint range-crossrange-Doppler estimation of moving targets inside buildings using
compressive sensing. We establish an appropriate signal model that permits formulation of linear modeling with sensing
matrices, so as to achieve scene reconstruction via sparse regularization. Supporting simulation results show that a
sizable reduction in the data volume is achieved using the proposed approach without a degradation in system
performance.
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In multi-input multi-output (MIMO) radar systems, the sparsity of targets in the target space can be
exploited by compressive sensing (CS) techniques to achieve either the same localization performance as
traditional methods but with significantly fewer measurements, or significantly improved performance with
the same number of measurements. This paper proposes a power allocation scheme for widely separated CSbased
MIMO radar. In particular, the allocation scheme minimizes the correlation between the target returns
from different search cells, or equivalently, the correlation between the columns of the sensing matrix. The
proposed power allocation scheme is shown to improve the detection performance as compared to a uniform
power allocation approach.
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In this paper, we propose a sample selection method for compressive multiple-input multiple-output (MIMO)
ultra-wideband (UWB) noise radar imaging. The proposed sample selection is based on comparing norm values
of the transmitted sequences, and selects the largest M samples among N candidates per antenna. Moreover,
we propose an adaptive weight allocation which improves normalized mean-square error (NMSE) by maximizing
the mutual information between target echoes and the transmitted signals. Further, this weighting scheme
is applicable to both sample selection schemes, a conventional random sampling and the proposed selection.
Simulations show that the proposed selection method can improve the multiple target detection probability and
NMSE. Moreover, the proposed weight allocation scheme is applicable to those selection methods and obtains
spatial diversity and signal-to-noise ratio (SNR) gains.
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Compressive sensing makes it possible to recover sparse target scenes from under-sampled measurements when
uncorrelated random-noise waveforms are used as probing signals. The mathematical theory behind this assertion
is based on the fact that Toeplitz and circulant random matrices generated from independent identically distributed
(i.i.d) Gaussian random sequences satisfy the restricted isometry property. In real systems, waveforms
have smooth, non-ideal autocorrelation functions, thereby degrading the performance of compressive sensing
algorithms. In this paper, we extend the existing theory to incorporate such non-idealities into the analysis of
compressive recovery. The presence of extended scatterers also causes distortions due to the correlation between
different cells of the target scene. Extended targets make the target scene more dense, causing random transmit
waveforms to be sub-optimal for recovery. We propose to incorporate extended targets by considering them to be
sparsely representable in redundant dictionaries. We demonstrate that a low complexity algorithm to optimize
the transmit waveform leads to improved performance.
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In this paper, we apply the idea of partial sparsity to scene reconstruction associated with through-the-wall radar imaging
of stationary targets. Partially sparse recovery considers the case when it is known a priori that the scene being imaged
consists of two parts, one of which is sparse and the other is expected to be dense. More specifically, we consider the
scene reconstruction problem involving a few stationary targets of interest when the building layout is assumed known.
This implies that the support of the dense part of the image corresponding to the exterior and interior walls is known a
priori. This knowledge may be available either through building blueprints or from prior surveillance operations. Using
experimental data collected in a laboratory environment, we demonstrate the effectiveness of the partially sparse
reconstruction of stationary through-the-wall scenes.
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According to the feature of strong correlation of remote sensing image, a target recognition method based on Constrained
Independent Component Analysis (CICA) via Compressed Sensing is put forward to realize the goal of remote sensing
image recognition. By using abundance nonnegative restriction and the abundance sum-to-one constraint, an Adaptive
Abundance Modeling (AAM) algorithm is proposed to ensure the reliability of the objective function. Then the CS
feature space classifier based on Constrained Independent Component Analysis of sparse signal is established, so as to
achieve recognition quickly. Experimental results show that the proposed algorithm can obtain more accurate results as
high as 90%, and improve the timeliness effectively.
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Image denoising is a fundamental image processing step for improving the overall quality of images. It is more
important for remote sensing images because they require significantly higher visual quality than others. Conventional
denoising methods, however, tend to over-suppress high-frequency details. To overcome this problem, we present a
novel compressive sensing (CS)-based noise removing algorithm using adaptive multiple samplings and reconstruction
error control. We first decompose an input noisy image into flat and edge regions, and then generate 8x8 block-based
measurement matrices with Gaussian probability distributions. The measurement matrix is applied to the first three
levels of wavelet transform coefficients of the input image for compressive sampling. The orthogonal matching pursuit
(OMP) is applied to reconstruct each block. In the reconstruction process, we use different error threshold values
according to both the decomposed region and the level of the wavelet transform based on the fast that the first level
wavelet coefficients in the edge region have the lowest error threshold, whereas the third level wavelet coefficients in
the flat region have the highest error threshold. By applying adaptive threshold value, we can reconstruct the image
without noise. Experimental results demonstrate that the proposed method removes noise better than existing state-ofthe-
art methods in the sense of both objective (PSNR/MSSIM) and subjective measures. We also implement the
proposed denoising algorithm for remote sensing images with by minimizing the computational load.
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