单图像超分辨率增强的深度模型

N. Majidi, K. Kiani, R. Rastgoo
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引用次数: 11

摘要

本研究提出了一种使用深度卷积神经网络重建高分辨率图像的方法。我们通过融合深度卷积网络和浅层卷积网络的输出特征,提出了一个名为深度块超分辨率(DBSR)的深度模型。通过这种方式,我们的模型受益于同时从深度和浅层网络中提取的高频和低频特征。我们使用模型中的剩余层来制作重复层,增加模型的深度,并制作端到端模型。此外,我们在上采样步骤中使用了深度网络,而不是以前大多数工作中使用的双三次插值方法。由于图像分辨率对于从医学图像中获得丰富的信息起着重要作用,有助于准确、快速地诊断疾病,因此我们使用医学图像来提高分辨率。我们的模型能够从医学图像和普通图像中的低分辨率图像重建高分辨率图像。TSA和TZDE数据集(包括MRI图像)以及Set5、Set14、B100和Urban100数据集(包含普通图像)的评估结果表明,我们的模型在医学和普通超分辨率增强方面都优于最先进的替代方案。
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A Deep Model for Super-resolution Enhancement from a Single Image
This study presents a method to reconstruct a high-resolution image using a deep convolution neural network. We propose a deep model, entitled Deep Block Super Resolution (DBSR), by fusing the output features of a deep convolutional network and a shallow convolutional network. In this way, our model benefits from high frequency and low frequency features extracted from deep and shallow networks simultaneously. We use the residual layers in our model to make repetitive layers, increase the depth of the model, and make an end-to-end model. Furthermore, we employed a deep network in up-sampling step instead of bicubic interpolation method used in most of the previous works. Since the image resolution plays an important role to obtain rich information from the medical images and helps for accurate and faster diagnosis of the ailment, we use the medical images for resolution enhancement. Our model is capable of reconstructing a high-resolution image from low-resolution one in both medical and general images. Evaluation results on TSA and TZDE datasets, including MRI images, and Set5, Set14, B100, and Urban100 datasets, including general images, demonstrate that our model outperforms state-of-the-art alternatives in both areas of medical and general super-resolution enhancement from a single input image.
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