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</script>Dataset used for the training of the segmentation model employed in the work "Deep Learning-Enhanced Characterization of Bubble Dynamics in Proton Exchange Membrane Water Electrolyzer" by André Colliard-Granero, Keusra A. Gompou, Christian Rodenbücher, Kourosh Malek, Michael H. Eikerling, and Mohammad J. Eslamibidgoli. This dataset consists in 35 images and the corresponding manual annotated masks of diverse bubbly scenarios extracted from the optical video recording of a PEMWE with a transparent flow field.
Machine Learning, Bubble, Segmentation, Deep Learning, Annotated, Images, PEMWE, electrolyzer, Dataset
Machine Learning, Bubble, Segmentation, Deep Learning, Annotated, Images, PEMWE, electrolyzer, Dataset
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