GFCN-8s, the proposed geometric deep learning network with three pooling layers and eight-fold upsampling, can extract rich geometric information from computed tomography scans of the brain. (IMAGE)
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GFCN-8s, the proposed geometric deep learning network with three pooling layers and eight-fold upsampling, can extract rich geometric information from computed tomography scans of the brain. This enables it to outperform the state-of-the-art models (U-Net, FCN-8s, and PointNet++) in detecting stroke lesions.
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Iporre-Rivas et al., doi 10.1117/1.JMI.10.4.044502.
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