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Image Reconstruction in a Manifold of Image Patches: Application to Whole-Fetus Ultrasound Imaging

机译:图像修补程序歧管中的图像重建:应用于全胎儿超声成像

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We propose an image reconstruction framework to combine a large number of overlapping image patches into a fused reconstruction of the object of interest, that is robust to inconsistencies between patches (e.g. motion artefacts) without explicitly modelling them. This is achieved through two mechanisms: first, manifold embedding, where patches are distributed on a manifold with similar patches (where similarity is defined only in the region where they overlap) closer to each other. As a result, inconsistent patches are set far apart in the manifold. Second, fusion, where a sample in the manifold is mapped back to image space, combining features from all patches in the region of the sample. For the manifold embedding mechanism, a new method based on a Convolutional Variational Autoencoder (β-VAE) is proposed, and compared to classical manifold embedding techniques: linear (Multi Dimensional Scaling) and non-linear (Laplacian Eigenmaps). Experiments using synthetic data and on real fetal ultrasound images yield fused images of the whole fetus where, in average, β-VAE outperforms all the other methods in terms of preservation of patch information and overall image quality.
机译:我们提出了一种图像重建框架,将大量重叠的图像补片组合成感兴趣对象的融合重构,这在不明确建模它们的情况下在不明确建模的情况下不一致地不一致。这是通过两个机制实现的:首先,歧管嵌入,其中贴片在具有类似斑块的歧管上分布(其中仅在它们重叠的区域中定义相似性)彼此相比定义。结果,不一致的贴片在歧管中相距很远。其次,融合,其中歧管中的样品被映射回图像空间,将来自样本区域中的所有贴片的功能组合。对于歧管嵌入机构,提出了一种基于卷积变分性自动沉积(β-VAE)的新方法,与典型歧管嵌入技术相比:线性(多维缩放)和非线性(Laplacian Eigenmaps)。使用合成数据和实际胎儿超声图像的实验产生整个胎儿的融合图像,平均而言,β-VAE在保存补丁信息和整体图像质量方面占所有其他方法。

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