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首页> 外文期刊>IEEE Transactions on Radiation and Plasma Medical Sciences >Artifact Removal in Sparse-Angle CT Based on Feature Fusion Residual Network
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Artifact Removal in Sparse-Angle CT Based on Feature Fusion Residual Network

机译:基于特征融合剩余网络的稀疏角度CT的伪影拆除

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摘要

To reduce the radiation dose from computed tomography (CT) scans and obtain high-quality images, various methods based on deep learning have been proposed for artifact removal in sparse CT. In this article, a new widely applicable method for artifact removal from sparse-angle CT images is proposed. We propose a feature fusion residual network (FFRN), which achieves excellent performance in removing artifacts from different anatomical regions of sparse angle CT images. In the FFRN, the residual skip dense block (RSDB) is introduced in the shallow layer to adequately utilize the feature information from the Conv layer of the residual block (RB). An improved RB is used in the FFRN deep layer to reduce the network complexity and training difficulty. The RSDB implements local feature fusion by skipping connections to enhance feature extraction. The use of a 3 x 3 convolution kernel in the RSDB and improved RB achieved better performance compared with a 1 x 1 convolution kernel. Weight normalization (WN) was used instead of batch normalization (BN) to improve the accuracy of the deep network. We use the original Hounsfield (HU) values of CT images for learning. The result obtained is comparable to the label image. In addition, it was verified that artifacts in the sparse-angle CT images can be better predicted without changing the image size.
机译:为了减少计算机断层摄影(CT)扫描并获得高质量图像的辐射剂量,已经提出了基于深度学习的各种方法,用于在稀疏CT中去除伪影。在本文中,提出了一种从稀疏角度CT图像中的伪影伪影的新广泛适用方法。我们提出了一种特征融合残余网络(FFRN),其在从稀疏角度CT图像的不同解剖区域中移除伪影方面实现了出色的性能。在FFRN中,在浅层中引入残余跳过密集块(RSDB)以充分利用来自残差块(RB)的CONV层的特征信息。在FFRN深层中使用改进的RB,以降低网络复杂性和培训难度。 RSDB通过跳过连接实现本地特征融合以增强特征提取。与1 x 1卷积内核相比,在RSDB中使用3×3卷积内核和改进的RB实现了更好的性能。使用重量归一化(WN)代替批量归一化(BN)以提高深网络的准确性。我们使用CT图像的原始Hounsfield(HU)值进行学习。所得到的结果与标签图像相当。另外,验证了稀疏角CT图像中的伪像可以更好地预测,而不会改变图像尺寸。

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