A DCT-based Tensor Completion Approach for Recovering Color Images and
Videos from Highly Undersampled Data
- URL: http://arxiv.org/abs/2110.09298v1
- Date: Mon, 18 Oct 2021 13:41:27 GMT
- Title: A DCT-based Tensor Completion Approach for Recovering Color Images and
Videos from Highly Undersampled Data
- Authors: Chenjian Pan and Chen Ling and Hongjin He and Liqun Qi and Yanwei Xu
- Abstract summary: We propose a novel tensor completion approach to recover color images and videos from undersampled data.
A series of numerical experiments including color image inpainting and video data recovery demonstrate that our proposed approach performs better than many existing state-of-theart tensor completion methods.
- Score: 0.8399688944263843
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Recovering color images and videos from highly undersampled data is a
fundamental and challenging task in face recognition and computer vision. By
the multi-dimensional nature of color images and videos, in this paper, we
propose a novel tensor completion approach, which is able to efficiently
explore the sparsity of tensor data under the discrete cosine transform (DCT).
Specifically, we introduce two DCT-based tensor completion models as well as
two implementable algorithms for their solutions. The first one is a DCT-based
weighted nuclear norm minimization model. The second one is called DCT-based
$p$-shrinking tensor completion model, which is a nonconvex model utilizing
$p$-shrinkage mapping for promoting the low-rankness of data. Moreover, we
accordingly propose two implementable augmented Lagrangian-based algorithms for
solving the underlying optimization models. A series of numerical experiments
including color and MRI image inpainting and video data recovery demonstrate
that our proposed approach performs better than many existing state-of-the-art
tensor completion methods, especially for the case when the ratio of missing
data is high.
Related papers
- Strong Baseline and Bag of Tricks for COVID-19 Detection of CT Scans [2.696776905220987]
Traditional deep learning frameworks encounter compatibility issues due to variations in slice numbers and resolutions in CT images.
We propose a novel slice selection method for each CT dataset to address this limitation.
In addition to the aforementioned methods, we explore various high-performance classification models, ultimately achieving promising results.
arXiv Detail & Related papers (2023-03-15T09:52:28Z) - Enhanced Sharp-GAN For Histopathology Image Synthesis [63.845552349914186]
Histopathology image synthesis aims to address the data shortage issue in training deep learning approaches for accurate cancer detection.
We propose a novel approach that enhances the quality of synthetic images by using nuclei topology and contour regularization.
The proposed approach outperforms Sharp-GAN in all four image quality metrics on two datasets.
arXiv Detail & Related papers (2023-01-24T17:54:01Z) - One Sample Diffusion Model in Projection Domain for Low-Dose CT Imaging [10.797632196651731]
Low-dose computed tomography (CT) plays a significant role in reducing the radiation risk in clinical applications.
With the rapid development and wide application of deep learning, it has brought new directions for the development of low-dose CT imaging algorithms.
We propose a fully unsupervised one sample diffusion model (OSDM)in projection domain for low-dose CT reconstruction.
The results prove that OSDM is practical and effective model for reducing the artifacts and preserving the image quality.
arXiv Detail & Related papers (2022-12-07T13:39:23Z) - Generative Modeling in Sinogram Domain for Sparse-view CT Reconstruction [12.932897771104825]
radiation dose in computed tomography (CT) examinations can be significantly reduced by intuitively decreasing the number of projection views.
Previous deep learning techniques with sparse-view data require sparse-view/full-view CT image pairs to train the network with supervised manners.
We present a fully unsupervised score-based generative model in sinogram domain for sparse-view CT reconstruction.
arXiv Detail & Related papers (2022-11-25T06:49:18Z) - DeepDC: Deep Distance Correlation as a Perceptual Image Quality
Evaluator [53.57431705309919]
ImageNet pre-trained deep neural networks (DNNs) show notable transferability for building effective image quality assessment (IQA) models.
We develop a novel full-reference IQA (FR-IQA) model based exclusively on pre-trained DNN features.
We conduct comprehensive experiments to demonstrate the superiority of the proposed quality model on five standard IQA datasets.
arXiv Detail & Related papers (2022-11-09T14:57:27Z) - Deep Learning for Material Decomposition in Photon-Counting CT [0.5801044612920815]
We present a novel deep-learning solution for material decomposition in PCCT, based on an unrolled/unfolded iterative network.
Our approach outperforms a maximum likelihood estimation, a variational method, as well as a fully-learned network.
arXiv Detail & Related papers (2022-08-05T19:05:16Z) - A Supervised Tensor Dimension Reduction-Based Prognostics Model for
Applications with Incomplete Imaging Data [2.538209532048867]
This paper proposes a supervised dimension reduction methodology for tensor data which has two advantages over most image-based prognostic models.
It utilizes time-to-failure (TTF) to supervise the extraction of low-dimensional features which makes the extracted features more effective for the subsequent prognostic.
arXiv Detail & Related papers (2022-07-22T22:06:17Z) - Spatial-Separated Curve Rendering Network for Efficient and
High-Resolution Image Harmonization [59.19214040221055]
We propose a novel spatial-separated curve rendering network (S$2$CRNet) for efficient and high-resolution image harmonization.
The proposed method reduces more than 90% parameters compared with previous methods.
Our method can work smoothly on higher resolution images in real-time which is more than 10$times$ faster than the existing methods.
arXiv Detail & Related papers (2021-09-13T07:20:16Z) - Deep Variational Network Toward Blind Image Restoration [60.45350399661175]
Blind image restoration is a common yet challenging problem in computer vision.
We propose a novel blind image restoration method, aiming to integrate both the advantages of them.
Experiments on two typical blind IR tasks, namely image denoising and super-resolution, demonstrate that the proposed method achieves superior performance over current state-of-the-arts.
arXiv Detail & Related papers (2020-08-25T03:30:53Z) - Data Consistent CT Reconstruction from Insufficient Data with Learned
Prior Images [70.13735569016752]
We investigate the robustness of deep learning in CT image reconstruction by showing false negative and false positive lesion cases.
We propose a data consistent reconstruction (DCR) method to improve their image quality, which combines the advantages of compressed sensing and deep learning.
The efficacy of the proposed method is demonstrated in cone-beam CT with truncated data, limited-angle data and sparse-view data, respectively.
arXiv Detail & Related papers (2020-05-20T13:30:49Z) - Deep Blind Video Super-resolution [85.79696784460887]
We propose a deep convolutional neural network (CNN) model to solve video SR by a blur kernel modeling approach.
The proposed CNN model consists of motion blur estimation, motion estimation, and latent image restoration modules.
We show that the proposed algorithm is able to generate clearer images with finer structural details.
arXiv Detail & Related papers (2020-03-10T13:43:24Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.