计算机科学
块(置换群论)
图像质量
人工智能
图像分辨率
编码器
管道(软件)
迭代重建
空间分析
光学(聚焦)
计算机视觉
特征(语言学)
残余物
模式识别(心理学)
图像(数学)
算法
哲学
物理
几何学
数学
遥感
光学
程序设计语言
地质学
操作系统
语言学
作者
Wanliang Wang,Haoxin Shen,Jiacheng Chen,Fangsen Xing
标识
DOI:10.1016/j.compbiomed.2023.107181
摘要
High-quality magnetic resonance imaging (MRI) affords clear body tissue structure for reliable diagnosing. However, there is a principal problem of the trade-off between acquisition speed and image quality. Image reconstruction and super-resolution are crucial techniques to solve these problems. In the main field of MR image restoration, most researchers mainly focus on only one of these aspects, namely reconstruction or super-resolution. In this paper, we propose an efficient model called Multi-Stage Hybrid Attention Network (MHAN) that performs the multi-task of recovering high-resolution (HR) MR images from low-resolution (LR) under-sampled measurements. Our model is highlighted by three major modules: (i) an Amplified Spatial Attention Block (ASAB) capable of enhancing the differences in spatial information, (ii) a Self-Attention Block with a Data-Consistency Layer (DC-SAB), which can improve the accuracy of the extracted feature information, (iii) an Adaptive Local Residual Attention Block (ALRAB) that focuses on both spatial and channel information. MHAN employs an encoder-decoder architecture to deeply extract contextual information and a pipeline to provide spatial accuracy. Compared with the recent multi-task model T2Net, our MHAN improves by 2.759 dB in PSNR and 0.026 in SSIM with scaling factor ×2 and acceleration factor 4× on T2 modality.
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