具有高分辨率的视网膜光学相干断层扫描术(八八)对于视网膜脉管系统的定量和分析很重要。然而,八颗图像的分辨率与相同采样频率的视野成反比,这不利于临床医生分析较大的血管区域。在本文中,我们提出了一个新型的基于稀疏的域适应超分辨率网络(SASR),以重建现实的6x6 mm2/低分辨率/低分辨率(LR)八八粒图像,以重建高分辨率(HR)表示。更具体地说,我们首先对3x3 mm2/高分辨率(HR)图像进行简单降解,以获得合成的LR图像。然后,采用一种有效的注册方法在6x6 mm2图像中以其相应的3x3 mm2图像区域注册合成LR,以获得裁切的逼真的LR图像。然后,我们提出了一个多级超分辨率模型,用于对合成数据进行全面监督的重建,从而通过生成的对流策略指导现实的LR图像重建现实的LR图像,该策略允许合成和现实的LR图像可以在特征中统一。领域。最后,新型的稀疏边缘感知损失旨在动态优化容器边缘结构。在两个八八集中进行的广泛实验表明,我们的方法的性能优于最先进的超分辨率重建方法。此外,我们还研究了重建结果对视网膜结构分割的性能,这进一步验证了我们方法的有效性。
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现实的高光谱图像(HSI)超分辨率(SR)技术旨在从其低分辨率(LR)对应物中产生具有更高光谱和空间忠诚的高分辨率(HR)HSI。生成的对抗网络(GAN)已被证明是图像超分辨率的有效深入学习框架。然而,现有GaN的模型的优化过程经常存在模式崩溃问题,导致光谱间不变重建容量有限。这可能导致所生成的HSI上的光谱空间失真,尤其是具有大的升级因子。为了缓解模式崩溃的问题,这项工作提出了一种与潜在编码器(Le-GaN)耦合的新型GaN模型,其可以将产生的光谱空间特征从图像空间映射到潜在空间并产生耦合组件正规化生成的样本。基本上,我们将HSI视为嵌入在潜在空间中的高维歧管。因此,GaN模型的优化被转换为学习潜在空间中的高分辨率HSI样本的分布的问题,使得产生的超分辨率HSI的分布更接近其原始高分辨率对应物的那些。我们对超级分辨率的模型性能进行了实验评估及其在缓解模式崩溃中的能力。基于具有不同传感器(即Aviris和UHD-185)的两种实际HSI数据集进行了测试和验证,用于各种升高因素并增加噪声水平,并与最先进的超分辨率模型相比(即Hyconet,LTTR,Bagan,SR-GaN,Wgan)。
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Because of the necessity to obtain high-quality images with minimal radiation doses, such as in low-field magnetic resonance imaging, super-resolution reconstruction in medical imaging has become more popular (MRI). However, due to the complexity and high aesthetic requirements of medical imaging, image super-resolution reconstruction remains a difficult challenge. In this paper, we offer a deep learning-based strategy for reconstructing medical images from low resolutions utilizing Transformer and Generative Adversarial Networks (T-GAN). The integrated system can extract more precise texture information and focus more on important locations through global image matching after successfully inserting Transformer into the generative adversarial network for picture reconstruction. Furthermore, we weighted the combination of content loss, adversarial loss, and adversarial feature loss as the final multi-task loss function during the training of our proposed model T-GAN. In comparison to established measures like PSNR and SSIM, our suggested T-GAN achieves optimal performance and recovers more texture features in super-resolution reconstruction of MRI scanned images of the knees and belly.
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High Resolution (HR) medical images provide rich anatomical structure details to facilitate early and accurate diagnosis. In MRI, restricted by hardware capacity, scan time, and patient cooperation ability, isotropic 3D HR image acquisition typically requests long scan time and, results in small spatial coverage and low SNR. Recent studies showed that, with deep convolutional neural networks, isotropic HR MR images could be recovered from low-resolution (LR) input via single image super-resolution (SISR) algorithms. However, most existing SISR methods tend to approach a scale-specific projection between LR and HR images, thus these methods can only deal with a fixed up-sampling rate. For achieving different up-sampling rates, multiple SR networks have to be built up respectively, which is very time-consuming and resource-intensive. In this paper, we propose ArSSR, an Arbitrary Scale Super-Resolution approach for recovering 3D HR MR images. In the ArSSR model, the reconstruction of HR images with different up-scaling rates is defined as learning a continuous implicit voxel function from the observed LR images. Then the SR task is converted to represent the implicit voxel function via deep neural networks from a set of paired HR-LR training examples. The ArSSR model consists of an encoder network and a decoder network. Specifically, the convolutional encoder network is to extract feature maps from the LR input images and the fully-connected decoder network is to approximate the implicit voxel function. Due to the continuity of the learned function, a single ArSSR model can achieve arbitrary up-sampling rate reconstruction of HR images from any input LR image after training. Experimental results on three datasets show that the ArSSR model can achieve state-of-the-art SR performance for 3D HR MR image reconstruction while using a single trained model to achieve arbitrary up-sampling scales.
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在临床医学中,磁共振成像(MRI)是诊断,分类,预后和治疗计划中最重要的工具之一。然而,MRI遭受了固有的慢数据采集过程,因为数据在k空间中顺序收集。近年来,大多数MRI重建方法在文献中侧重于整体图像重建而不是增强边缘信息。这项工作通过详细说明了对边缘信息的提高来阐述了这一趋势。具体地,我们通过结合多视图信息介绍一种用于快速多通道MRI重建的新型并行成像耦合双鉴别器生成的对抗网络(PIDD-GaN)。双判别设计旨在改善MRI重建中的边缘信息。一个鉴别器用于整体图像重建,而另一个鉴别器是负责增强边缘信息的负责。为发电机提出了一种具有本地和全局剩余学习的改进的U-Net。频率通道注意块(FCA块)嵌入在发电机中以结合注意力机制。引入内容损耗以培训发电机以获得更好的重建质量。我们对Calgary-Campinas公共大脑MR DataSet进行了全面的实验,并将我们的方法与最先进的MRI重建方法进行了比较。在MICCAI13数据集上进行了对剩余学习的消融研究,以验证所提出的模块。结果表明,我们的PIDD-GaN提供高质量的重建MR图像,具有良好的边缘信息。单图像重建的时间低于5ms,符合加快处理的需求。
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图像超分辨率(SR)是重要的图像处理方法之一,可改善计算机视野领域的图像分辨率。在过去的二十年中,在超级分辨率领域取得了重大进展,尤其是通过使用深度学习方法。这项调查是为了在深度学习的角度进行详细的调查,对单像超分辨率的最新进展进行详细的调查,同时还将告知图像超分辨率的初始经典方法。该调查将图像SR方法分类为四个类别,即经典方法,基于学习的方法,无监督学习的方法和特定领域的SR方法。我们还介绍了SR的问题,以提供有关图像质量指标,可用参考数据集和SR挑战的直觉。使用参考数据集评估基于深度学习的方法。一些审查的最先进的图像SR方法包括增强的深SR网络(EDSR),周期循环gan(Cincgan),多尺度残留网络(MSRN),Meta残留密度网络(META-RDN) ,反复反射网络(RBPN),二阶注意网络(SAN),SR反馈网络(SRFBN)和基于小波的残留注意网络(WRAN)。最后,这项调查以研究人员将解决SR的未来方向和趋势和开放问题的未来方向和趋势。
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自动检测视网膜结构,例如视网膜血管(RV),凹起的血管区(FAZ)和视网膜血管连接(RVJ),对于了解眼睛的疾病和临床决策非常重要。在本文中,我们提出了一种新型的基于投票的自适应特征融合多任务网络(VAFF-NET),用于在光学相干性层析成像(OCTA)中对RV,FAZ和RVJ进行联合分割,检测和分类。提出了一个特定于任务的投票门模块,以适应并融合两个级别的特定任务的不同功能:来自单个编码器的不同空间位置的特征,以及来自多个编码器的功能。特别是,由于八八座图像中微脉管系统的复杂性使视网膜血管连接连接到分叉/跨越具有挑战性的任务的同时定位和分类,因此我们通过结合热图回归和网格分类来专门设计任务头。我们利用来自各种视网膜层的三个不同的\ textit {en face}血管造影,而不是遵循仅使用单个\ textit {en face}的现有方法。为了促进进一步的研究,已经发布了这些数据集的部分数据集,并已发布了公共访问:https://github.com/imed-lab/vaff-net。
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Deep Convolutional Neural Networks (DCNNs) have exhibited impressive performance on image super-resolution tasks. However, these deep learning-based super-resolution methods perform poorly in real-world super-resolution tasks, where the paired high-resolution and low-resolution images are unavailable and the low-resolution images are degraded by complicated and unknown kernels. To break these limitations, we propose the Unsupervised Bi-directional Cycle Domain Transfer Learning-based Generative Adversarial Network (UBCDTL-GAN), which consists of an Unsupervised Bi-directional Cycle Domain Transfer Network (UBCDTN) and the Semantic Encoder guided Super Resolution Network (SESRN). First, the UBCDTN is able to produce an approximated real-like LR image through transferring the LR image from an artificially degraded domain to the real-world LR image domain. Second, the SESRN has the ability to super-resolve the approximated real-like LR image to a photo-realistic HR image. Extensive experiments on unpaired real-world image benchmark datasets demonstrate that the proposed method achieves superior performance compared to state-of-the-art methods.
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Image Super-Resolution (SR) is essential for a wide range of computer vision and image processing tasks. Investigating infrared (IR) image (or thermal images) super-resolution is a continuing concern within the development of deep learning. This survey aims to provide a comprehensive perspective of IR image super-resolution, including its applications, hardware imaging system dilemmas, and taxonomy of image processing methodologies. In addition, the datasets and evaluation metrics in IR image super-resolution tasks are also discussed. Furthermore, the deficiencies in current technologies and possible promising directions for the community to explore are highlighted. To cope with the rapid development in this field, we intend to regularly update the relevant excellent work at \url{https://github.com/yongsongH/Infrared_Image_SR_Survey
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当前的深层图像超分辨率(SR)方法试图从下采样的图像或假设简单高斯内核和添加噪声中降解来恢复高分辨率图像。但是,这种简单的图像处理技术代表了降低图像分辨率的现实世界过程的粗略近似。在本文中,我们提出了一个更现实的过程,通过引入新的内核对抗学习超分辨率(KASR)框架来处理现实世界图像SR问题,以降低图像分辨率。在提议的框架中,降解内核和噪声是自适应建模的,而不是明确指定的。此外,我们还提出了一个迭代监督过程和高频选择性目标,以进一步提高模型SR重建精度。广泛的实验验证了对现实数据集中提出的框架的有效性。
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基于对抗性学习的图像抑制方法,由于其出色的性能,已经在计算机视觉中进行了广泛的研究。但是,大多数现有方法对实际情况的质量功能有限,因为它们在相同场景的透明和合成的雾化图像上进行了培训。此外,它们在保留鲜艳的色彩和丰富的文本细节方面存在局限性。为了解决这些问题,我们开发了一个新颖的生成对抗网络,称为整体注意力融合对抗网络(HAAN),用于单个图像。 Haan由Fog2FogFogre块和FogFree2Fog块组成。在每个块中,有三个基于学习的模块,即雾除雾,颜色纹理恢复和雾合成,它们相互限制以生成高质量的图像。 Haan旨在通过学习雾图图像之间的整体通道空间特征相关性及其几个派生图像之间的整体通道空间特征相关性来利用纹理和结构信息的自相似性。此外,在雾合成模块中,我们利用大气散射模型来指导它,以通过新颖的天空分割网络专注于大气光优化来提高生成质量。关于合成和现实世界数据集的广泛实验表明,就定量准确性和主观的视觉质量而言,Haan的表现优于最先进的脱落方法。
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Informative features play a crucial role in the single image super-resolution task. Channel attention has been demonstrated to be effective for preserving information-rich features in each layer. However, channel attention treats each convolution layer as a separate process that misses the correlation among different layers. To address this problem, we propose a new holistic attention network (HAN), which consists of a layer attention module (LAM) and a channel-spatial attention module (CSAM), to model the holistic interdependencies among layers, channels, and positions. Specifically, the proposed LAM adaptively emphasizes hierarchical features by considering correlations among layers. Meanwhile, CSAM learns the confidence at all the positions of each channel to selectively capture more informative features. Extensive experiments demonstrate that the proposed HAN performs favorably against the state-ofthe-art single image super-resolution approaches.
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Despite the breakthroughs in accuracy and speed of single image super-resolution using faster and deeper convolutional neural networks, one central problem remains largely unsolved: how do we recover the finer texture details when we super-resolve at large upscaling factors? The behavior of optimization-based super-resolution methods is principally driven by the choice of the objective function. Recent work has largely focused on minimizing the mean squared reconstruction error. The resulting estimates have high peak signal-to-noise ratios, but they are often lacking high-frequency details and are perceptually unsatisfying in the sense that they fail to match the fidelity expected at the higher resolution. In this paper, we present SRGAN, a generative adversarial network (GAN) for image superresolution (SR). To our knowledge, it is the first framework capable of inferring photo-realistic natural images for 4× upscaling factors. To achieve this, we propose a perceptual loss function which consists of an adversarial loss and a content loss. The adversarial loss pushes our solution to the natural image manifold using a discriminator network that is trained to differentiate between the super-resolved images and original photo-realistic images. In addition, we use a content loss motivated by perceptual similarity instead of similarity in pixel space. Our deep residual network is able to recover photo-realistic textures from heavily downsampled images on public benchmarks. An extensive mean-opinion-score (MOS) test shows hugely significant gains in perceptual quality using SRGAN. The MOS scores obtained with SRGAN are closer to those of the original high-resolution images than to those obtained with any state-of-the-art method.
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Low-field (LF) MRI scanners have the power to revolutionize medical imaging by providing a portable and cheaper alternative to high-field MRI scanners. However, such scanners are usually significantly noisier and lower quality than their high-field counterparts. The aim of this paper is to improve the SNR and overall image quality of low-field MRI scans to improve diagnostic capability. To address this issue, we propose a Nested U-Net neural network architecture super-resolution algorithm that outperforms previously suggested deep learning methods with an average PSNR of 78.83 and SSIM of 0.9551. We tested our network on artificial noisy downsampled synthetic data from a major T1 weighted MRI image dataset called the T1-mix dataset. One board-certified radiologist scored 25 images on the Likert scale (1-5) assessing overall image quality, anatomical structure, and diagnostic confidence across our architecture and other published works (SR DenseNet, Generator Block, SRCNN, etc.). We also introduce a new type of loss function called natural log mean squared error (NLMSE). In conclusion, we present a more accurate deep learning method for single image super-resolution applied to synthetic low-field MRI via a Nested U-Net architecture.
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使用卷积神经网络(CNN)的最先进的磁共振(MR)图像超分辨率方法(ISR)由于CNN的空间覆盖率有限,因此在有限的上下文信息中利用有限的上下文信息。Vision Transformers(VIT)学习更好的全球环境,这有助于产生优质的HR图像。我们将CNN的本地信息和来自VIT的全局信息结合在一起,以获得图像超级分辨率和输出超级分辨率的图像,这些图像的质量比最先进的方法所产生的质量更高。我们通过多个新颖的损失函数包括额外的约束,这些损失功能将结构和纹理信息从低分辨率到高分辨率图像。
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在相应的辅助对比的指导下,目标对比度的超级分辨磁共振(MR)图像(提供了其他解剖信息)是快速MR成像的新解决方案。但是,当前的多对比超分辨率(SR)方法倾向于直接连接不同的对比度,从而忽略了它们在不同的线索中的关系,例如在高强度和低强度区域中。在这项研究中,我们提出了一个可分离的注意网络(包括高强度的优先注意力和低强度分离注意力),名为SANET。我们的卫生网可以借助辅助对比度探索“正向”和“反向”方向中高强度和低强度区域的区域,同时学习目标对比MR的SR的更清晰的解剖结构和边缘信息图片。 SANET提供了三个吸引人的好处:(1)这是第一个探索可分离的注意机制的模型,该机制使用辅助对比来预测高强度和低强度区域,将更多的注意力转移到精炼这些区域和这些区域之间的任何不确定细节和纠正重建结果中的细小区域。 (2)提出了一个多阶段集成模块,以学习多个阶段的多对比度融合的响应,获得融合表示之间的依赖性,并提高其表示能力。 (3)在FastMRI和Clinical \ textit {in Vivo}数据集上进行了各种最先进的多对比度SR方法的广泛实验,证明了我们模型的优势。
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单个图像超分辨率(SISR)是一个不良问题,旨在获得从低分辨率(LR)输入的高分辨率(HR)输出,在此期间应该添加额外的高频信息以改善感知质量。现有的SISR工作主要通过最小化平均平方重建误差来在空间域中运行。尽管高峰峰值信噪比(PSNR)结果,但难以确定模型是否正确地添加所需的高频细节。提出了一些基于基于残余的结构,以指导模型暗示高频率特征。然而,由于空间域度量的解释是有限的,如何验证这些人为细节的保真度仍然是一个问题。在本文中,我们提出了频率域视角来的直观管道,解决了这个问题。由现有频域的工作启发,我们将图像转换为离散余弦变换(DCT)块,然后改革它们以获取DCT功能映射,它用作我们模型的输入和目标。设计了专门的管道,我们进一步提出了符合频域任务的性质的频率损失功能。我们的SISR方法在频域中可以明确地学习高频信息,为SR图像提供保真度和良好的感知质量。我们进一步观察到我们的模型可以与其他空间超分辨率模型合并,以提高原始SR输出的质量。
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尽管基准数据集的成功,但大多数先进的面部超分辨率模型在真实情况下表现不佳,因为真实图像与合成训练对之间的显着域间隙。为了解决这个问题,我们提出了一种用于野外面部超分辨率的新型域 - 自适应降级网络。该降级网络预测流场以及中间低分辨率图像。然后,通过翘曲中间图像来生成降级的对应物。利用捕获运动模糊的偏好,这种模型在保护原始图像和劣化之间保持身份一致性更好地执行。我们进一步提出了超分辨率网络的自我调节块。该块将输入图像作为条件术语,以有效地利用面部结构信息,从而消除了对显式前沿的依赖性,例如,面部地标或边界。我们的模型在Celeba和真实世界的面部数据集上实现了最先进的性能。前者展示了我们所提出的建筑的强大生成能力,而后者展示了现实世界中的良好的身份一致性和感知品质。
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Face super-resolution is a domain-specific image super-resolution, which aims to generate High-Resolution (HR) face images from their Low-Resolution (LR) counterparts. In this paper, we propose a novel face super-resolution method, namely Semantic Encoder guided Generative Adversarial Face Ultra-Resolution Network (SEGA-FURN) to ultra-resolve an unaligned tiny LR face image to its HR counterpart with multiple ultra-upscaling factors (e.g., 4x and 8x). The proposed network is composed of a novel semantic encoder that has the ability to capture the embedded semantics to guide adversarial learning and a novel generator that uses a hierarchical architecture named Residual in Internal Dense Block (RIDB). Moreover, we propose a joint discriminator which discriminates both image data and embedded semantics. The joint discriminator learns the joint probability distribution of the image space and latent space. We also use a Relativistic average Least Squares loss (RaLS) as the adversarial loss to alleviate the gradient vanishing problem and enhance the stability of the training procedure. Extensive experiments on large face datasets have proved that the proposed method can achieve superior super-resolution results and significantly outperform other state-of-the-art methods in both qualitative and quantitative comparisons.
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面部超分辨率(FSR),也称为面部幻觉,其旨在增强低分辨率(LR)面部图像以产生高分辨率(HR)面部图像的分辨率,是特定于域的图像超分辨率问题。最近,FSR获得了相当大的关注,并目睹了深度学习技术的发展炫目。迄今为止,有很少有基于深入学习的FSR的研究摘要。在本次调查中,我们以系统的方式对基于深度学习的FSR方法进行了全面审查。首先,我们总结了FSR的问题制定,并引入了流行的评估度量和损失功能。其次,我们详细说明了FSR中使用的面部特征和流行数据集。第三,我们根据面部特征的利用大致分类了现有方法。在每个类别中,我们从设计原则的一般描述开始,然后概述代表方法,然后讨论其中的利弊。第四,我们评估了一些最先进的方法的表现。第五,联合FSR和其他任务以及与FSR相关的申请大致介绍。最后,我们设想了这一领域进一步的技术进步的前景。在\ URL {https://github.com/junjun-jiang/face-hallucination-benchmark}上有一个策划的文件和资源的策划文件和资源清单
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