梯度计
电磁屏蔽
噪音(视频)
探测器
降噪
声学
物理
信号(编程语言)
卷积神经网络
噪声地板
噪声测量
屏蔽电缆
电磁干扰
信噪比(成像)
计算机科学
电磁场
环境噪声级
核磁共振
磁场
光学
磁强计
人工智能
电信
量子力学
图像(数学)
程序设计语言
声音(地理)
作者
Jiasheng Su,Ruben Pellicer‐Guridi,Thomas L. Edwards,Fuentes Miguel,Matthew S. Rosen,Viktor Vegh,David C. Reutens
标识
DOI:10.1109/tmi.2022.3147450
摘要
The shielding of electromagnetic noise is critical in obtaining magnetic resonance imaging measurements in the ultra-low magnetic field regime where the intrinsic signal-to-noise ratio is very small. The traditional approach of using an enclosure for electromagnetic shielding is expensive and hinders system portability. We describe here the use of a CNN-based software gradiometer to suppress the effect of electromagnetic ambient background noise sources that inductively couple into the signal detection coils. The system involves three ambient noise monitoring coils placed at a distance from the magnetic resonance signal detector. The three coils were used to synthesize the ambient noise captured by the signal detector; a convolutional neural network approach was used. Mathematical foundations are provided to justify the noise suppression framework. The results show that as much as 20-fold noise suppression can be achieved using an optimized convolutional neural network and simultaneous ambient noise measurements. The proposed approach has the potential to replace the requirement for magnetically shielded enclosures and make ultra-low field magnetic resonance imaging truly portable.
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