原子云检测和分割使用深度神经网络

L. Hofer, Milan Krstaji'c, P'eter Juh'asz, A. L. Marchant, Robert P. Smith
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引用次数: 2

摘要

我们使用深度神经网络在吸收和荧光图像中检测和放置超冷原子云周围的感兴趣区域框-能够在单个图像中识别和绑定多个云。神经网络还输出分割掩码,识别每个云的大小、形状和方向,从中提取云的高斯参数。这允许二维高斯拟合可靠地播种,从而实现全自动图像处理。
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Atom cloud detection and segmentation using a deep neural network
We use a deep neural network to detect and place region-of-interest boxes around ultracold atom clouds in absorption and fluorescence images---with the ability to identify and bound multiple clouds within a single image. The neural network also outputs segmentation masks that identify the size, shape and orientation of each cloud from which we extract the clouds' Gaussian parameters. This allows 2D Gaussian fits to be reliably seeded thereby enabling fully automatic image processing.
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