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AM-SegNet for additive manufacturing in situ X-ray image segmentation and feature quantification

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Figshare2024-03-11 更新2026-04-28 收录
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https://figshare.com/articles/dataset/AM-SegNet_for_additive_manufacturing_i_in_situ_i_X-ray_image_segmentation_and_feature_quantification/25379658
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Synchrotron X-ray imaging has been utilised to detect the dynamic behaviour of molten pools during the metal additive manufacturing (AM) process, where a substantial amount of imaging data is generated. Here, we develop an efficient and robust deep learning model, AM-SegNet, for segmenting and quantifying high-resolution X-ray images and prepare a large-scale database consisting of over 10,000 pixel-labelled images for model training and testing. AM-SegNet incorporates a lightweight convolution block and a customised attention mechanism, capable of performing semantic segmentation with high accuracy (∼96%) and processing speed (
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2024-03-11
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