| Literature DB >> 30453638 |
Bo Chen1, Juan F P J Abascal2, Manuchehr Soleimani3.
Abstract
Electrical resistance tomography (ERT) is an imaging technique to recover the conductivity distribution with boundary measurements via attached electrodes. There are a wide range of applications using ERT for image reconstruction or parameter calculation due to high speed data collection, low cost, and the advantages of being non-invasive and portable. Although ERT is considered a high temporal resolution method, a temporally regularized method can greatly enhance such a temporal resolution compared to frame-by-frame reconstruction. In some of the cases, especially in the industrial applications, dynamic movement of an object is critical. In practice, it is desirable for monitoring and controlling the dynamic process. ERT can determine the spatial conductivity distribution based on previous work, and ERT potentially shows good performance in exploiting temporal information as well. Many ERT algorithms reconstruct images frame by frame, which is not optimal and would assume that the target is static during collection of each data frame, which is inconsistent with the real case. Although spatiotemporal-based algorithms can account for the temporal effect of dynamic movement and can generate better results, there is not that much work aimed at analyzing the performance in the time domain. In this paper, we discuss the performance of a novel spatiotemporal total variation (STTV) algorithm in both the spatial and temporal domain, and Temporal One-Step Tikhonov-based algorithms were also employed for comparison. The experimental results show that the STTV has a faster response time for temporal variation of the moving object. This robust time response can contribute to a much better control process which is the main aim of the new generation of process tomography systems.Entities:
Keywords: dynamical ERT; electrical resistance tomography; total variation (TV) algorithm
Year: 2018 PMID: 30453638 PMCID: PMC6263700 DOI: 10.3390/s18114014
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1(a) Swisstom EIT Pioneer system; (b) experimental tank.
Figure 2Illustration of the dynamic movement type. The cross movement is shown in (a); and (b) illustrates the circular movement.
Reconstructed images of cross movement in Test 1, where the inclusion moves from the bottom to the top.
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Reconstructed images of cross movement in Test 1, where the inclusion moves from the left to the right hand side.
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Reconstructed images from the circular movement test.
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Spatial gradients of the results produced from STTV and TOS algorithms, where the reconstructed object is near the center. The image of the spatial gradient is generated from calculating the gradient of the reconstructed image. The spatial distribution plotted in the second row uses the middle row of the image matrix, and the 1-d plot of the spatial gradient is produced to evaluate the spatial variation.
| Algorithm | TOS | STTV |
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| Spatial gradient |
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| 1-d plot of spatial distribution |
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| 1-d plot of spatial gradient |
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Spatial gradients of the results produced from STTV and TOS algorithms, where the reconstructed object moves to the second position.
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| 1-d plot of spatial distribution |
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| 1-d plot of spatial gradient |
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Spatial gradients of the results produced from STTV and TOS algorithms, where the reconstructed object moves to the edge of the domain.
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| 1-d plot of spatial distribution |
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| 1-d plot of spatial gradient |
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The results of spatial and temporal gradients of the circular movement test using STTV and TOS algorithms. The image of the spatial gradient is generated by calculating the spatial gradient of the reconstructed image of a specific frame number, and the temporal gradient image is based on the time gradient between neighboring frames. The line graph of the decay coefficient is based on the gradient value from the images of spatial and temporal gradients.
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| Decay of coefficients in spatial |
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| Decay of coefficients in time |
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The results of spatial and temporal gradients of the cross movement test using STTV and TOS algorithms. The image of the spatial gradient is generated by calculating the spatial gradient of reconstructed images of a specific frame number, and the temporal gradient image is based on the time gradient between neighboring frames. The line graph of the decay coefficient is based on the gradient value from the images of spatial and temporal gradients.
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Figure 3(a) Time variation of a pixel extracted from the results of the cross movement; (b) the plot of the corresponding temporal gradient. The red line is the result when using TOS, and the blue line indicates the STTV results.
Figure 4(a) Time variation of a pixel extracted from the results of the circular movement; (b) the plot of the corresponding temporal gradient. The red line is the result using TOS, and the blue line indicates the STTV results.
Time response of both algorithms when testing the cross movement.
| Algorithm | TOS | STTV |
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| Time response | 3.21 s (77 frames) | 2.12 s (49 frames) |
Time response of both algorithms when testing the circular movement.
| Algorithm | TOS | STTV |
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| Time response | 0.52 s (26 frames) | 0.26s (13 frames) |