基于密集变压器的增强编码网络无监督金属伪影减少

Wangduo Xie, Matthew B. Blaschko
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引用次数: 0

摘要

金属伪影对CT图像的破坏对临床诊断有严重的负面影响。考虑到在临床环境中收集具有基础真理的配对数据的困难,金属伪影减少的无监督方法受到高度关注。然而,以往的无监督方法在处理金属伪影的非局部特征时,难以保留CT图像中的结构信息。为了解决这些挑战,我们提出了一种新的基于密集变压器的增强编码网络(DTEC-Net),用于无监督金属伪影的减少。具体来说,我们引入了一种分层解纠缠编码器,由高阶密集过程和变压器支持,以获得具有远程对应的密集编码序列。在此基础上,提出了一种二阶解纠缠方法来改善密集序列的解码过程。大量的实验和模型讨论说明了DTEC-Net的有效性,它在基准数据集上优于以前最先进的方法,并且在恢复更丰富的纹理细节的同时大大减少了金属伪像。
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Dense Transformer based Enhanced Coding Network for Unsupervised Metal Artifact Reduction
CT images corrupted by metal artifacts have serious negative effects on clinical diagnosis. Considering the difficulty of collecting paired data with ground truth in clinical settings, unsupervised methods for metal artifact reduction are of high interest. However, it is difficult for previous unsupervised methods to retain structural information from CT images while handling the non-local characteristics of metal artifacts. To address these challenges, we proposed a novel Dense Transformer based Enhanced Coding Network (DTEC-Net) for unsupervised metal artifact reduction. Specifically, we introduce a Hierarchical Disentangling Encoder, supported by the high-order dense process, and transformer to obtain densely encoded sequences with long-range correspondence. Then, we present a second-order disentanglement method to improve the dense sequence's decoding process. Extensive experiments and model discussions illustrate DTEC-Net's effectiveness, which outperforms the previous state-of-the-art methods on a benchmark dataset, and greatly reduces metal artifacts while restoring richer texture details.
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