Two-Step Image Hallucination and Its Application to 3D Medical Image Super-resolution

Y. Kondo, X. Han, X. Wei, Yenwei Chen
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Abstract

In medical diagnosis, high resolution (HR) images are indispensable for giving more correct decision. However, in order to obtain high resolution medical images, it is necessary to impose long-time, hence it leads to heavy burden to the patient. Therefore Super Resolution technique, which can generate high resolution images from low resolution images using machine learning techniques, attracts hot attention recently. Therein, face hallucination is one of widely used super-resolution methods in image restoration field. However, the conventional face hallucination generally cannot recover high frequency information. Therefore, this paper integrates a further learning step into the conventional method, and proposes a 2-step image hallucination, which is prospected to recover most high frequency information lost in the available low-resolution input. Furthermore, we apply the proposed strategy to generate the high-resolution Z-direction data using self-similarity among different direction for 3D medical MR images. Experimental results show that the proposed strategy can reconstruct promising HR coronal or sagittal plane by using available LR and HR data pairs in axial plane. Keywords-image restoration; super-resolution; medical volumetric image
两步图像幻觉及其在三维医学图像超分辨率中的应用
在医学诊断中,高分辨率图像对于做出更正确的诊断是必不可少的。然而,为了获得高分辨率的医学图像,需要长时间的施加,这给患者带来了沉重的负担。因此,利用机器学习技术从低分辨率图像中生成高分辨率图像的超分辨率技术近年来备受关注。其中,人脸幻觉是图像恢复领域中应用广泛的超分辨率方法之一。然而,传统的人脸幻觉通常无法恢复高频信息。因此,本文将进一步的学习步骤整合到传统的方法中,提出了一种两步图像幻觉,有望恢复在可用的低分辨率输入中丢失的大部分高频信息。此外,我们将该策略应用于三维医学MR图像,利用不同方向之间的自相似性生成高分辨率的z方向数据。实验结果表明,该策略可以利用轴向面可用的LR和HR数据对重构有希望的HR冠状面或矢状面。Keywords-image恢复;超分辨率;医学体积成像
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