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Showing papers by "Shihui Ying published in 2018"


Journal ArticleDOI
Jun Shi1, Xiao Zheng1, Yan Li2, Qi Zhang1, Shihui Ying1 
TL;DR: Experimental results indicate that MM-SDPN is superior over the state-of-the-art multimodal feature-learning-based algorithms for AD diagnosis.
Abstract: The accurate diagnosis of Alzheimer's disease (AD) and its early stage, i.e., mild cognitive impairment, is essential for timely treatment and possible delay of AD. Fusion of multimodal neuroimaging data, such as magnetic resonance imaging (MRI) and positron emission tomography (PET), has shown its effectiveness for AD diagnosis. The deep polynomial networks (DPN) is a recently proposed deep learning algorithm, which performs well on both large-scale and small-size datasets. In this study, a multimodal stacked DPN (MM-SDPN) algorithm, which MM-SDPN consists of two-stage SDPNs, is proposed to fuse and learn feature representation from multimodal neuroimaging data for AD diagnosis. Specifically speaking, two SDPNs are first used to learn high-level features of MRI and PET, respectively, which are then fed to another SDPN to fuse multimodal neuroimaging information. The proposed MM-SDPN algorithm is applied to the ADNI dataset to conduct both binary classification and multiclass classification tasks. Experimental results indicate that MM-SDPN is superior over the state-of-the-art multimodal feature-learning-based algorithms for AD diagnosis.

315 citations


Journal ArticleDOI
TL;DR: This work proposes a novel residual learning-based SR algorithm for MRI, which combines both multi-scale GRL and shallow network block-based local residual learning (LRL), which works effectively in capturing high-frequency details by learning local residuals.
Abstract: Spatial resolution is one of the key parameters of magnetic resonance imaging (MRI). The image super-resolution (SR) technique offers an alternative approach to improve the spatial resolution of MRI due to its simplicity. Convolutional neural networks (CNN)-based SR algorithms have achieved state-of-the-art performance, in which the global residual learning (GRL) strategy is now commonly used due to its effectiveness for learning image details for SR. However, the partial loss of image details usually happens in a very deep network due to the degradation problem. In this work, we propose a novel residual learning-based SR algorithm for MRI, which combines both multi-scale GRL and shallow network block-based local residual learning (LRL). The proposed LRL module works effectively in capturing high-frequency details by learning local residuals. One simulated MRI dataset and two real MRI datasets have been used to evaluate our algorithm. The experimental results show that the proposed SR algorithm achieves superior performance to all of the other compared CNN-based SR algorithms in this work.

89 citations


Journal ArticleDOI
TL;DR: This paper forms a semisupervised distance metric learning model by considering the metric information of inner classes and interclasses, and converts the model to a minimization problem whose variable is symmetric positive-definite matrix.
Abstract: In this paper, we address the semisupervised distance metric learning problem and its applications in classification and image retrieval First, we formulate a semisupervised distance metric learning model by considering the metric information of inner classes and interclasses In this model, an adaptive parameter is designed to balance the inner metrics and intermetrics by using data structure Second, we convert the model to a minimization problem whose variable is symmetric positive-definite matrix Third, in implementation, we deduce an intrinsic steepest descent method, which assures that the metric matrix is strictly symmetric positive-definite at each iteration, with the manifold structure of the symmetric positive-definite matrix manifold Finally, we test the proposed algorithm on conventional data sets, and compare it with other four representative methods The numerical results validate that the proposed method significantly improves the classification with the same computational efficiency

61 citations


Journal ArticleDOI
TL;DR: A deep neural mapping large margin distribution machine (DNMLDM) algorithm is proposed by adopting the deep neural network (DNN) to perform a kernel mapping instead of the implicit kernel function in LDM, which outperforms all the compared algorithms on both datasets.

23 citations


Journal ArticleDOI
TL;DR: This paper proposes a sparse quadratic kernel-free least squares semi-supervised support vector machine model by adding an L1 norm regularization term to the objective function and using the least squares method, which results in a nonconvex and nonsmooth Quadratic programming problem.

10 citations