12 research outputs found
CGAN-ECT: Tomography Image Reconstruction from Electrical Capacitance Measurements Using CGANs
Due to the rapid growth of Electrical Capacitance Tomography (ECT)
applications in several industrial fields, there is a crucial need for
developing high quality, yet fast, methodologies of image reconstruction from
raw capacitance measurements. Deep learning, as an effective non-linear mapping
tool for complicated functions, has been going viral in many fields including
electrical tomography. In this paper, we propose a Conditional Generative
Adversarial Network (CGAN) model for reconstructing ECT images from capacitance
measurements. The initial image of the CGAN model is constructed from the
capacitance measurement. To our knowledge, this is the first time to represent
the capacitance measurements in an image form. We have created a new massive
ECT dataset of 320K synthetic image measurements pairs for training, and
testing the proposed model. The feasibility and generalization ability of the
proposed CGAN-ECT model are evaluated using testing dataset, contaminated data
and flow patterns that are not exposed to the model during the training phase.
The evaluation results prove that the proposed CGAN-ECT model can efficiently
create more accurate ECT images than traditional and other deep learning-based
image reconstruction algorithms. CGAN-ECT achieved an average image correlation
coefficient of more than 99.3% and an average relative image error about 0.07.Comment: 13 pages, 10 figures, 6 table
Abstract Colored Local Invariant Features for Object Description
This paper addresses the problem of combining color and geometric invariants for object description by proposing a novel colored invariant local feature descriptor. The proposed approach uses scale-space theory to detect the most geometrically robust features in a physical-based color invariant space. The stability and the distinction of the detected features are compared with the SIFT approach. The evaluation results support the potential of the proposed approach
K-Means Cloning: Adaptive Spherical K-Means Clustering
We propose a novel method for adaptive K-means clustering. The proposed method overcomes the problems of the traditional K-means algorithm. Specifically, the proposed method does not require prior knowledge of the number of clusters. Additionally, the initial identification of the cluster elements has no negative impact on the final generated clusters. Inspired by cell cloning in microorganism cultures, each added data sample causes the existing cluster ‘colonies’ to evaluate, with the other clusters, various merging or splitting actions in order for reaching the optimum cluster set. The proposed algorithm is adequate for clustering data in isolated or overlapped compact spherical clusters. Experimental results support the effectiveness of this clustering algorithm
Adversarial Resolution Enhancement for Electrical Capacitance Tomography Image Reconstruction
High-quality image reconstruction is essential for many electrical capacitance tomography (CT) applications. Raw capacitance measurements are used in the literature to generate low-resolution images. However, such low-resolution images are not sufficient for proper functionality of most systems. In this paper, we propose a novel adversarial resolution enhancement (ARE-ECT) model to reconstruct high-resolution images of inner distributions based on low-quality initial images, which are generated from the capacitance measurements. The proposed model uses a UNet as the generator of a conditional generative adversarial network (CGAN). The generator’s input is set to the low-resolution image rather than the typical random input signal. Additionally, the CGAN is conditioned by the input low-resolution image itself. For evaluation purposes, a massive ECT dataset of 320 K synthetic image–measurement pairs was created. This dataset is used for training, validating, and testing the proposed model. New flow patterns, which are not exposed to the model during the training phase, are used to evaluate the feasibility and generalization ability of the ARE-ECT model. The superiority of ARE-ECT, in the efficient generation of more accurate ECT images than traditional and other deep learning-based image reconstruction algorithms, is proved by the evaluation results. The ARE-ECT model achieved an average image correlation coefficient of more than 98.8% and an average relative image error about 0.1%