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Deep learning enhanced individual nuclear-spin detection

机译:深度学习增强个人核自旋检测

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The detection of nuclear spins using individual electron spins has enabled diverse opportunities in quantum sensing and quantum information processing. Proof-of-principle experiments have demonstrated atomic-scale imaging of nuclear-spin samples and controlled multi-qubit registers. However, to image more complex samples and to realize larger-scale quantum processors, computerized methods that efficiently and automatically characterize spin systems are required. Here, we realize a deep learning model for automatic identification of nuclear spins using the electron spin of single nitrogen-vacancy (NV) centers in diamond as a sensor. Based on neural network algorithms, we develop noise recovery procedures and training sequences for highly non-linear spectra. We apply these methods to experimentally demonstrate the fast identification of 31 nuclear spins around a single NV center and accurately determine the hyperfine parameters. Our methods can be extended to larger spin systems and are applicable to a wide range of electron-nuclear interaction strengths. These results pave the way towards efficient imaging of complex spin samples and automatic characterization of large spin-qubit registers.
机译:使用单独的电子旋转检测核旋转在量子传感和量子信息处理中使能够各种机会。原则上的实验证明了核自旋样品的原子级成像和受控的多量子位寄存器。然而,为了实现更复杂的样本并实现更大刻度的量子处理器,需要有效和自动表征自旋系统的计算机化方法。在这里,我们实现了一种使用金刚石中的单氮空位(NV)中心的电子旋转自动识别核旋转的深度学习模型。基于神经网络算法,我们为高度非线性光谱制定噪声恢复过程和训练序列。我们应用这些方法来实验证明31个核旋转围绕单个NV中心的核旋转,并准确地确定高血清参数。我们的方法可以扩展到较大的旋转系统,适用于各种电子核相互作用强度。这些结果铺平了复杂旋转样本的有效成像以及大型自旋Qubit寄存器的自动表征。

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