Deep Network for Image Compressed Sensing Coding Using Local Structural
Sampling
- URL: http://arxiv.org/abs/2402.19111v1
- Date: Thu, 29 Feb 2024 12:43:28 GMT
- Title: Deep Network for Image Compressed Sensing Coding Using Local Structural
Sampling
- Authors: Wenxue Cui, Xingtao Wang, Xiaopeng Fan, Shaohui Liu, Xinwei Gao, Debin
Zhao
- Abstract summary: We propose a new CNN based image CS coding framework using local structural sampling (dubbed CSCNet)
In the proposed framework, instead of GRM, a new local structural sampling matrix is first developed.
The measurements with high correlations are produced, which are then coded into final bitstreams by the third-party image.
- Score: 37.10939114542612
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Existing image compressed sensing (CS) coding frameworks usually solve an
inverse problem based on measurement coding and optimization-based image
reconstruction, which still exist the following two challenges: 1) The widely
used random sampling matrix, such as the Gaussian Random Matrix (GRM), usually
leads to low measurement coding efficiency. 2) The optimization-based
reconstruction methods generally maintain a much higher computational
complexity. In this paper, we propose a new CNN based image CS coding framework
using local structural sampling (dubbed CSCNet) that includes three functional
modules: local structural sampling, measurement coding and Laplacian pyramid
reconstruction. In the proposed framework, instead of GRM, a new local
structural sampling matrix is first developed, which is able to enhance the
correlation between the measurements through a local perceptual sampling
strategy. Besides, the designed local structural sampling matrix can be jointly
optimized with the other functional modules during training process. After
sampling, the measurements with high correlations are produced, which are then
coded into final bitstreams by the third-party image codec. At last, a
Laplacian pyramid reconstruction network is proposed to efficiently recover the
target image from the measurement domain to the image domain. Extensive
experimental results demonstrate that the proposed scheme outperforms the
existing state-of-the-art CS coding methods, while maintaining fast
computational speed.
Related papers
- MB-RACS: Measurement-Bounds-based Rate-Adaptive Image Compressed Sensing Network [65.1004435124796]
We propose a Measurement-Bounds-based Rate-Adaptive Image Compressed Sensing Network (MB-RACS) framework.
Our experiments demonstrate that the proposed MB-RACS method surpasses current leading methods.
arXiv Detail & Related papers (2024-01-19T04:40:20Z) - Unfolding Framework with Prior of Convolution-Transformer Mixture and
Uncertainty Estimation for Video Snapshot Compressive Imaging [7.601695814245209]
We consider the problem of video snapshot compressive imaging (SCI), where sequential high-speed frames are modulated by different masks and captured by a single measurement.
By combining optimization algorithms and neural networks, deep unfolding networks (DUNs) score tremendous achievements in solving inverse problems.
arXiv Detail & Related papers (2023-06-20T06:25:48Z) - Image Reconstruction for Accelerated MR Scan with Faster Fourier
Convolutional Neural Networks [87.87578529398019]
Partial scan is a common approach to accelerate Magnetic Resonance Imaging (MRI) data acquisition in both 2D and 3D settings.
We propose a novel convolutional operator called Faster Fourier Convolution (FasterFC) to replace the two consecutive convolution operations.
A 2D accelerated MRI method, FasterFC-End-to-End-VarNet, which uses FasterFC to improve the sensitivity maps and reconstruction quality.
A 3D accelerated MRI method called FasterFC-based Single-to-group Network (FAS-Net) that utilizes a single-to-group algorithm to guide k-space domain reconstruction
arXiv Detail & Related papers (2023-06-05T13:53:57Z) - JSRNN: Joint Sampling and Reconstruction Neural Networks for High
Quality Image Compressed Sensing [8.902545322578925]
Two sub-networks, which are the sampling sub-network and the reconstruction sub-network, are included in the proposed framework.
In the reconstruction sub-network, a cascade network combining stacked denoising autoencoder (SDA) and convolutional neural network (CNN) is designed to reconstruct signals.
This framework outperforms many other state-of-the-art methods, especially at low sampling rates.
arXiv Detail & Related papers (2022-11-11T02:20:30Z) - Pushing the Efficiency Limit Using Structured Sparse Convolutions [82.31130122200578]
We propose Structured Sparse Convolution (SSC), which leverages the inherent structure in images to reduce the parameters in the convolutional filter.
We show that SSC is a generalization of commonly used layers (depthwise, groupwise and pointwise convolution) in efficient architectures''
Architectures based on SSC achieve state-of-the-art performance compared to baselines on CIFAR-10, CIFAR-100, Tiny-ImageNet, and ImageNet classification benchmarks.
arXiv Detail & Related papers (2022-10-23T18:37:22Z) - Content-aware Scalable Deep Compressed Sensing [8.865549833627794]
We present a novel content-aware scalable network dubbed CASNet to address image compressed sensing problems.
We first adopt a data-driven saliency detector to evaluate the importances of different image regions and propose a saliency-based block ratio aggregation (BRA) strategy for sampling rate allocation.
To accelerate training convergence and improve network robustness, we propose an SVD-based scheme and a random transformation enhancement (RTE) strategy.
arXiv Detail & Related papers (2022-07-19T14:59:14Z) - Residual Multiplicative Filter Networks for Multiscale Reconstruction [24.962697695403037]
We introduce a new coordinate network architecture and training scheme that enables coarse-to-fine optimization with fine-grained control over the frequency support of learned reconstructions.
We demonstrate how these modifications enable multiscale optimization for coarse-to-fine fitting to natural images.
We then evaluate our model on synthetically generated datasets for the the problem of single-particle cryo-EM reconstruction.
arXiv Detail & Related papers (2022-06-01T20:16:28Z) - Spectral Compressive Imaging Reconstruction Using Convolution and
Contextual Transformer [6.929652454131988]
We propose a hybrid network module, namely CCoT (Contextual Transformer) block, which can acquire the inductive bias ability of transformer simultaneously.
We integrate the proposed CCoT block into deep unfolding framework based on the generalized alternating projection algorithm, and further propose the GAP-CT network.
arXiv Detail & Related papers (2022-01-15T06:30:03Z) - CSformer: Bridging Convolution and Transformer for Compressive Sensing [65.22377493627687]
This paper proposes a hybrid framework that integrates the advantages of leveraging detailed spatial information from CNN and the global context provided by transformer for enhanced representation learning.
The proposed approach is an end-to-end compressive image sensing method, composed of adaptive sampling and recovery.
The experimental results demonstrate the effectiveness of the dedicated transformer-based architecture for compressive sensing.
arXiv Detail & Related papers (2021-12-31T04:37:11Z) - Kullback-Leibler Divergence-Based Fuzzy $C$-Means Clustering
Incorporating Morphological Reconstruction and Wavelet Frames for Image
Segmentation [152.609322951917]
We come up with a Kullback-Leibler (KL) divergence-based Fuzzy C-Means (FCM) algorithm by incorporating a tight wavelet frame transform and a morphological reconstruction operation.
The proposed algorithm works well and comes with better segmentation performance than other comparative algorithms.
arXiv Detail & Related papers (2020-02-21T05:19:10Z)
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.