Atom cloud detection and segmentation using a deep neural network
We use a deep neural network (NN) to detect and place region-of-interest (ROI) boxes around ultracold atom clouds in absorption and fluorescence images—with the ability to identify and bound multiple clouds within a single image. The NN also outputs segmentation masks that identify the size, shape a...
Main Authors: | Hofer, LR, Krstajić, M, Juhász, P, Marchant, AL, Smith, RP |
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Format: | Journal article |
Language: | English |
Published: |
IOP Publishing
2021
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