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Total 131 records

    Review of data science trends and issues in porous media research with a focus on image-based techniques

    , Article Water Resources Research ; Volume 57, Issue 10 , 2021 ; 00431397 (ISSN) Rabbani, A ; Fernando, A. M ; Shams, R ; Singh, A ; Mostaghimi, P ; Babaei, M ; Sharif University of Technology
    John Wiley and Sons Inc  2021
    Abstract
    Data science as a flourishing interdisciplinary domain of computer and mathematical sciences is playing an important role in guiding the porous material research streams. In the present narrative review, we have examined recent trends and issues in data-driven methods used in the image-based porous material research studies relevant to water resources researchers and scientists. Initially, the recent trends in porous material data-related issues have been investigated through search engine queries in terms of data source, data storage hub, programing languages, and software packages. Subsequent to a diligent analysis of the existing trends, a review of the common concepts of porous material... 

    A hybrid of statistical and conditional generative adversarial neural network approaches for reconstruction of 3D porous media (ST-CGAN)

    , Article Advances in Water Resources ; Volume 158 , 2021 ; 03091708 (ISSN) Shams, R ; Masihi, M ; Bozorgmehry Boozarjomehry, R ; Blunt, M. J ; Sharif University of Technology
    Elsevier Ltd  2021
    Abstract
    A coupled statistical and conditional generative adversarial neural network is used for 3D reconstruction of both homogeneous and heterogeneous porous media from a single two-dimensional image. A statistical approach feeds the deep network with conditional data, and then the reconstruction is trained on a deep generative network. The conditional nature of the generative model helps in network stability and convergence which has been optimized through a gradient-descent-based optimization method. Moreover, this coupled approach allows the reconstruction of heterogeneous samples, a critical and serious challenge in conventional reconstruction methods. The main contribution of this work is to... 

    Super-resolution photoacoustic microscopy using structured-illumination

    , Article IEEE Transactions on Medical Imaging ; Volume 40, Issue 9 , 2021 , Pages 2197-2207 ; 02780062 (ISSN) Amjadian, M. R ; Mostafavi, M ; Chen, J ; Kavehvash, Z ; Zhu, J ; Wang, L ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2021
    Abstract
    A novel super-resolution volumetric photoacoustic microscopy, based on the theory of structured-illumination, is proposed in this paper. The structured-illumination will be introduced in order to surpass the diffraction limit in a photoacoustic microscopy (PAM) structure. Through optical excitation of the targeted object with a sinusoidal spatial fringe pattern, the object's frequency spectrum is forced to shift in the spatial frequency domain. The shifting in the desired direction leads to the passage of the high-frequency contents of the object through the passband of the acoustic diffraction frequency response. Finally, combining the low-frequency image with the high-frequency parts in... 

    (ASNA) an attention-based Siamese-difference neural network with surrogate ranking loss function for perceptual image quality assessment

    , Article 2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops, CVPRW 2021, 19 June 2021 through 25 June 2021 ; 2021 , Pages 388-397 ; 21607508 (ISSN); 9781665448994 (ISBN) Ayyoubzadeh, M ; Royat, A ; Sharif University of Technology
    IEEE Computer Society  2021
    Abstract
    Recently, deep convolutional neural networks (DCNN) that leverage the adversarial training framework for image restoration and enhancement have significantly improved the processed images' sharpness. Surprisingly, although these DCNNs produced crispier images than other methods visually, they may get a lower quality score when popular measures are employed for evaluating them. Therefore it is necessary to develop a quantitative metric to reflect their performances, which is well-aligned with the perceived quality of an image. Famous quantitative metrics such as Peak signal-to-noise ratio (PSNR), The structural similarity index measure (SSIM), and Perceptual Index (PI) are not well-correlated... 

    NTIRE 2021 challenge on perceptual image quality assessment

    , Article 2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops, CVPRW 2021, 19 June 2021 through 25 June 2021 ; 2021 , Pages 677-690 ; 21607508 (ISSN); 9781665448994 (ISBN) Gu, J ; Cai, H ; Dong, C ; Ren, J.S ; Qiao, Y ; Gu, S ; Timofte, R ; Cheon, M ; Yoon, S ; Kang, B. K ; Lee, J ; Zhang, Q ; Guo, H ; Bin, Y ; Hou, Y ; Luo, H ; Guo, J ; Wang, Z ; Wang, H ; Yang, W ; Bai, Q ; Shi, S ; Xia, W ; Cao, M ; Wang, J ; Chen, Y ; Yang, Y ; Li, Y ; Zhang, T ; Feng, L ; Liao, Y ; Li, J ; Thong, W ; Pereira, J. C ; Leonardis, A ; McDonagh, S ; Xu, K ; Yang, L ; Cai, H ; Sun, P ; Ayyoubzadeh, M ; Royat, A ; Fezza, A ; Hammou, D ; Hamidouche, W ; Ahn, S ; Yoon, G ; Tsubota, K ; Akutsu, H ; Aizawa, K ; Sharif University of Technology
    IEEE Computer Society  2021
    Abstract
    This paper reports on the NTIRE 2021 challenge on perceptual image quality assessment (IQA), held in conjunction with the New Trends in Image Restoration and Enhancement workshop (NTIRE) workshop at CVPR 2021. As a new type of image processing technology, perceptual image processing algorithms based on Generative Adversarial Networks (GAN) have produced images with more realistic textures. These output images have completely different characteristics from traditional distortions, thus pose a new challenge for IQA methods to evaluate their visual quality. In comparison with previous IQA challenges, the training and testing datasets in this challenge include the outputs of perceptual image... 

    Time-domain ultrasound as prior information for frequency-domain compressive ultrasound for intravascular cell detection: A 2-cell numerical model

    , Article Ultrasonics ; Volume 125 , 2022 ; 0041624X (ISSN) Ghanbarzadeh Dagheyan, A ; Nili, V. A ; Ejtehadi, M ; Savabi, R ; Kavehvash, Z ; Ahmadian, M. T ; Vahdat, B. V ; Sharif University of Technology
    Elsevier B.V  2022
    Abstract
    This study proposes a new method for the detection of a weak scatterer among strong scatterers using prior-information ultrasound (US) imaging. A perfect application of this approach is in vivo cell detection in the bloodstream, where red blood cells (RBCs) serve as identifiable strong scatterers. In vivo cell detection can help diagnose cancer at its earliest stages, increasing the chances of survival for patients. This work combines time-domain US with frequency-domain compressive US imaging to detect a 20-μ MCF-7 circulating tumor cell (CTC) among a number of RBCs within a simulated venule inside the mouth. The 2D image reconstructed from the time-domain US is employed to simulate the... 

    Fast multidimensional dictionary learning algorithms and their application in 3D inverse synthetic aperture radar image restoration and noise reduction

    , Article IET Radar, Sonar and Navigation ; Volume 16, Issue 9 , 2022 , Pages 1484-1502 ; 17518784 (ISSN) Mehrpooya, A ; Nazari, M ; Abbasi, Z ; Karbasi, S. M ; Nayebi, M. M ; Bastani, M. H ; Sharif University of Technology
    John Wiley and Sons Inc  2022
    Abstract
    By generalising dictionary learning (DL) algorithms to multidimensional (MD) mode and using them in applications where signals are inherently multidimensional, such as in three-dimensional (3D) inverse synthetic aperture radar (ISAR) imaging, it is possible to achieve much higher speed and less computational complexity. In this study, the formulation of the multidimensional dictionary learning (MDDL) problem is expressed and two algorithms are proposed to solve it. The first one is based on the method of optimum directions (MOD) algorithm for 1D dictionary learning (1DDL), which uses alternating minimisation and gradient projection approach. As the MDDL problem is non-convex, the second... 

    PARS-NET: A novel deep learning framework using parallel residual conventional neural networks for sparse-view CT reconstruction

    , Article Journal of Instrumentation ; Volume 17, Issue 2 , 2022 ; 17480221 (ISSN) Khodajou Chokami, H ; Hosseini, S. A ; Ay, M. R ; Sharif University of Technology
    IOP Publishing Ltd  2022
    Abstract
    Sparse-view computed tomography (CT) is recently proposed as a promising method to speed up data acquisition and alleviate the issue of CT high dose delivery to the patients. However, traditional reconstruction algorithms are time-consuming and suffer from image degradation when faced with sparse-view data. To address this problem, we propose a new framework based on deep learning (DL) that can quickly produce high-quality CT images from sparsely sampled projections and is able for clinical use. Our DL-based proposed model is based on the convolution, and residual neural networks in a parallel manner, named the parallel residual neural network (PARS-Net). Besides, our proposed PARS-Net model... 

    Simple and efficient remote sensing image transformation for lossless compression

    , Article Proceedings of SPIE - The International Society for Optical Engineering ; Volume 8285 , 2011 ; 0277786X (ISSN) ; 9780819489326 (ISBN) Sepehrband, F ; Ghamisi, P ; Mortazavi, M ; Choupan, J ; Sharif University of Technology
    2011
    Abstract
    Remote Sensing (RS) images or satellite images include information about earth. Compression of RS images is important in the field of satellite transmission systems and mass storage purposes. Because of importance of information and existent of large amount of details, lossless compression preferred. Real time compression technique is applied on satellite and aerial transmission systems [1]. A simple algorithm accelerates the whole process in real time purposes. Lossless JPEG, JPEG-LS and JPEG2000 are some famous lossless compression methods. Transformation is the first step of these methods. In this paper, a simple and efficient method of lossless image transformation has been introduced by... 

    On a various soft computing algorithms for reconstruction of the neutron noise source in the nuclear reactor cores

    , Article Annals of Nuclear Energy ; Volume 114 , 2018 , Pages 19-31 ; 03064549 (ISSN) Hosseini, A ; Esmaili Paeen Afrakoti, I ; Sharif University of Technology
    Elsevier Ltd  2018
    Abstract
    This paper presents a comparative study of various soft computing algorithms for reconstruction of neutron noise sources in the nuclear reactor cores. To this end, the computational code for reconstruction of neutron noise source is developed based on the Adaptive Neuro-Fuzzy Inference System (ANFIS), Decision Tree (DT), Radial Basis Function (RBF) and Support Vector Machine (SVM) algorithms. Neutron noise source reconstruction process using the developed computational code consists of three stages of training, testing and validation. The information of neutron noise sources and induced neutron noise distributions are used as output and input data of training stage, respectively. As input... 

    Microwave medical imaging based on sparsity and an iterative method with adaptive thresholding

    , Article IEEE Transactions on Medical Imaging ; Volume 34, Issue 2 , September , 2015 , Pages 357-365 ; 02780062 (ISSN) Azghani, M ; Kosmas, P ; Marvasti, F ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2015
    Abstract
    We propose a new image recovery method to improve the resolution in microwave imaging applications. Scattered field data obtained from a simplified breast model with closely located targets is used to formulate an electromagnetic inverse scattering problem, which is then solved using the Distorted Born Iterative Method (DBIM). At each iteration of the DBIM method, an underdetermined set of linear equations is solved using our proposed sparse recovery algorithm, IMATCS. Our results demonstrate the ability of the proposed method to recover small targets in cases where traditional DBIM approaches fail. Furthermore, in order to regularize the sparse recovery algorithm, we propose a novel...