论文标题
通过卷积和空间变压器网络无监督的稀疏视图反射
Unsupervised Sparse-view Backprojection via Convolutional and Spatial Transformer Networks
论文作者
论文摘要
许多成像技术依赖于断层造影重建,这需要解决有限数量的投影,因此需要解决多维逆问题。反向注射是层析成像重建的流行算法类别,但是,当投影角度稀疏和/或传感器特性不统一时,通常会导致图像重建差。已经开发了几种基于深度学习的算法来解决此反问题并使用有限数量的投影重建图像。但是,这些算法通常需要地面真相的示例(即重建图像的示例)才能产生良好的性能。在本文中,我们介绍了一种无监督的稀疏视觉反射算法,该算法不需要地面真相。该算法由发电机项目框架中的两个模块组成;卷积神经网络和空间变压器网络。我们使用人胸部的计算机断层扫描(CT)图像评估了算法。我们表明,当投影角度非常稀疏以及传感器特性在不同角度变化时,我们的算法显着超过表现过滤的反射。我们的方法在医学成像和其他成像方式(例如雷达)中具有实际应用,在时间或抽样约束时,可能会获得稀疏和/或不均匀的投影。
Many imaging technologies rely on tomographic reconstruction, which requires solving a multidimensional inverse problem given a finite number of projections. Backprojection is a popular class of algorithm for tomographic reconstruction, however it typically results in poor image reconstructions when the projection angles are sparse and/or if the sensors characteristics are not uniform. Several deep learning based algorithms have been developed to solve this inverse problem and reconstruct the image using a limited number of projections. However these algorithms typically require examples of the ground-truth (i.e. examples of reconstructed images) to yield good performance. In this paper, we introduce an unsupervised sparse-view backprojection algorithm, which does not require ground-truth. The algorithm consists of two modules in a generator-projector framework; a convolutional neural network and a spatial transformer network. We evaluated our algorithm using computed tomography (CT) images of the human chest. We show that our algorithm significantly out-performs filtered backprojection when the projection angles are very sparse, as well as when the sensor characteristics vary for different angles. Our approach has practical applications for medical imaging and other imaging modalities (e.g. radar) where sparse and/or non-uniform projections may be acquired due to time or sampling constraints.