用于多种x射线图像合成的自关注引导多尺度梯度GAN

Muhammad Muneeb Saad, M. H. Rehmani, Ruairi O'Reilly
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引用次数: 4

摘要

不平衡图像数据集是生物医学图像分析领域中常见的数据集。生物医学图像包含多种特征,对预测目标疾病具有重要意义。生成对抗网络(GANs)通过生成合成图像来解决数据限制问题。模式崩溃、不收敛和不稳定性等训练挑战会降低GAN在合成多样化和高质量图像方面的性能。在这项工作中,MSG-SAGAN是一种注意力引导的多尺度梯度GAN架构,用于建模生物医学图像特征之间的远程依赖关系,并在生成器和鉴别器模型层中使用多分辨率的多尺度梯度流来提高训练性能。目的是减少模式崩溃的影响,并使用具有多尺度梯度学习的注意力机制来稳定GAN的训练,以进行多样化的x射线图像合成。采用多尺度结构相似指数测度(MS-SSIM)和Frechet Inception Distance (FID)来识别模态坍缩的发生并评价合成图像的多样性。将所提出的结构与多尺度梯度GAN (MSG-GAN)进行比较,以评估生成的合成图像的多样性。结果表明,MS-SSIM和FID分数证明,MSG-SAGAN在合成多样化图像方面优于MSG-GAN。
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A Self-attention Guided Multi-scale Gradient GAN for Diversified X-ray Image Synthesis
Imbalanced image datasets are commonly available in the domain of biomedical image analysis. Biomedical images contain diversified features that are significant in predicting targeted diseases. Generative Adversarial Networks (GANs) are utilized to address the data limitation problem via the generation of synthetic images. Training challenges such as mode collapse, non-convergence, and instability degrade a GAN's performance in synthesizing diversified and high-quality images. In this work, MSG-SAGAN, an attention-guided multi-scale gradient GAN architecture is proposed to model the relationship between long-range dependencies of biomedical image features and improves the training performance using a flow of multi-scale gradients at multiple resolutions in the layers of generator and discriminator models. The intent is to reduce the impact of mode collapse and stabilize the training of GAN using an attention mechanism with multi-scale gradient learning for diversified X-ray image synthesis. Multi-scale Structural Similarity Index Measure (MS-SSIM) and Frechet Inception Distance (FID) are used to identify the occurrence of mode collapse and evaluate the diversity of synthetic images generated. The proposed architecture is compared with the multi-scale gradient GAN (MSG-GAN) to assess the diversity of generated synthetic images. Results indicate that the MSG-SAGAN outperforms MSG-GAN in synthesizing diversified images as evidenced by the MS-SSIM and FID scores.
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