WAE-TLDN: self-supervised fusion for multimodal medical images via a weighted autoencoder and a tensor low-rank decomposition network

被引:0
作者
Linna Pan
Rencan Nie
Gucheng Zhang
Jinde Cao
Yao Han
机构
[1] Yunnan University,School of Information Science and Engineering
[2] Southeast University,School of Mathematics
[3] Yunan Key Laboratory of Intelligent Systems and Computing,Yonsei Frontier Laboratory
[4] Yonsei University,undefined
来源
Applied Intelligence | 2024年 / 54卷
关键词
Multimodal medical image fusion; Weighted autoencoder; Tensor low-rank decomposition; Feature enhancement network; Structure tensor loss;
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中图分类号
学科分类号
摘要
Multimodal medical image fusion (MMIF) integrates the advantages of multiple source images to assist clinical diagnosis. Existing image fusion methods need help to distinguish the importance between features and often define features to be retained subjectively, which leads to global structure loss and limits the performance of fusion. To overcome these restrictions, we propose a novel self-supervised tensor low-rank decomposition fusion network that can effectively extract global information from high-rank to low-rank conversion processes. Specifically, the compensation of textural features is performed by employing a self-supervised auxiliary task, and the whole network is dynamically fine-tuned according to a hybrid loss. In our model, an enhanced weights (EW) estimation method based on the global luminance contrast is developed, and a structure tensor loss with constraints is introduced to improve the robustness of the fusion results. Moreover, extensive experiments on six types of multimodal medical images show that visual and qualitative results are superior to competitors, validating the effectiveness of our methods.
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页码:1656 / 1671
页数:15
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