Image Reconstruction
528 papers with code • 5 benchmarks • 7 datasets
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Use these libraries to find Image Reconstruction models and implementationsLatest papers with no code
Mining Supervision for Dynamic Regions in Self-Supervised Monocular Depth Estimation
In the next stage, we use an object network to estimate the depth of those moving objects assuming rigid motions.
High-fidelity Endoscopic Image Synthesis by Utilizing Depth-guided Neural Surfaces
In surgical oncology, screening colonoscopy plays a pivotal role in providing diagnostic assistance, such as biopsy, and facilitating surgical navigation, particularly in polyp detection.
HybridFlow: Infusing Continuity into Masked Codebook for Extreme Low-Bitrate Image Compression
This paper investigates the challenging problem of learned image compression (LIC) with extreme low bitrates.
Multi-feature Reconstruction Network using Crossed-mask Restoration for Unsupervised Anomaly Detection
Unsupervised anomaly detection using only normal samples is of great significance for quality inspection in industrial manufacturing.
MindTuner: Cross-Subject Visual Decoding with Visual Fingerprint and Semantic Correction
Decoding natural visual scenes from brain activity has flourished, with extensive research in single-subject tasks and, however, less in cross-subject tasks.
DensePANet: An improved generative adversarial network for photoacoustic tomography image reconstruction from sparse data
In this study, we proposed an end-to-end method called DensePANet to solve the problem of PAT image reconstruction from sparse data.
Event Cameras Meet SPADs for High-Speed, Low-Bandwidth Imaging
Traditional cameras face a trade-off between low-light performance and high-speed imaging: longer exposure times to capture sufficient light results in motion blur, whereas shorter exposures result in Poisson-corrupted noisy images.
Diffusion assisted image reconstruction in optoacoustic tomography
In this paper we consider the problem of acoustic inversion in the context of the optoacoustic tomography image reconstruction problem.
Multi-Branch Generative Models for Multichannel Imaging with an Application to PET/CT Joint Reconstruction
This paper presents a proof-of-concept approach for learned synergistic reconstruction of medical images using multi-branch generative models.
Accelerating Cardiac MRI Reconstruction with CMRatt: An Attention-Driven Approach
This study aims to explore the untapped potential of attention mechanisms incorporated with a deep learning model within the context of the CMR reconstruction problem.