Cheng Che Tsai, Xiaoyang Chen, Sahar Ahmad, Pew-Thian Yap
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引用次数: 0
摘要
磁共振成像(MRI)通常用于研究婴儿的大脑发育。然而,由于图像采集时间长、受试者服从性有限,高质量的婴儿磁共振成像具有挑战性。在不增加图像采集负担的情况下,图像超分辨率(SR)可用于提高采集后的图像质量。大多数超分辨率技术都是有监督的,并在多个对齐的低分辨率(LR)和高分辨率(HR)图像对上进行训练,但实际上通常无法获得这些图像对。与有监督的方法不同,深度图像优先(DIP)可用于无监督的单图像 SR,仅利用输入的低分辨率图像进行全新优化,生成高分辨率图像。然而,确定何时停止 DIP 训练并非易事,这对 SR 过程的完全自动化提出了挑战。为了解决这个问题,我们限制 SR 图像的低频 k 空间与 LR 图像的低频 k 空间相似。我们通过设计双模态框架,利用 T1 加权和 T2 加权图像之间共享的解剖信息,进一步提高了性能。我们在从出生到一岁的婴儿磁共振成像数据上评估了我们的模型--双模态 DIP(dmDIP),结果表明,在大幅降低对早期停跳敏感性的同时,还能获得更高的图像质量。
Robust Unsupervised Super-Resolution of Infant MRI via Dual-Modal Deep Image Prior.
Magnetic resonance imaging (MRI) is commonly used for studying infant brain development. However, due to the lengthy image acquisition time and limited subject compliance, high-quality infant MRI can be challenging. Without imposing additional burden on image acquisition, image super-resolution (SR) can be used to enhance image quality post-acquisition. Most SR techniques are supervised and trained on multiple aligned low-resolution (LR) and high-resolution (HR) image pairs, which in practice are not usually available. Unlike supervised approaches, Deep Image Prior (DIP) can be employed for unsupervised single-image SR, utilizing solely the input LR image for de novo optimization to produce an HR image. However, determining when to stop early in DIP training is non-trivial and presents a challenge to fully automating the SR process. To address this issue, we constrain the low-frequency k-space of the SR image to be similar to that of the LR image. We further improve performance by designing a dual-modal framework that leverages shared anatomical information between T1-weighted and T2-weighted images. We evaluated our model, dual-modal DIP (dmDIP), on infant MRI data acquired from birth to one year of age, demonstrating that enhanced image quality can be obtained with substantially reduced sensitivity to early stopping.