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CS2-Net: Deep Learning Segmentation of Curvilinear Structures in Medical Imaging

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arxiv 2010.07486 v2 pith:IIKOYWWK submitted 2020-10-15 eess.IV cs.CV

CS2-Net: Deep Learning Segmentation of Curvilinear Structures in Medical Imaging

classification eess.IV cs.CV
keywords curvilinearstructuresmedicalsegmentationattentioncs2-netfeaturesimages
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Automated detection of curvilinear structures, e.g., blood vessels or nerve fibres, from medical and biomedical images is a crucial early step in automatic image interpretation associated to the management of many diseases. Precise measurement of the morphological changes of these curvilinear organ structures informs clinicians for understanding the mechanism, diagnosis, and treatment of e.g. cardiovascular, kidney, eye, lung, and neurological conditions. In this work, we propose a generic and unified convolution neural network for the segmentation of curvilinear structures and illustrate in several 2D/3D medical imaging modalities. We introduce a new curvilinear structure segmentation network (CS2-Net), which includes a self-attention mechanism in the encoder and decoder to learn rich hierarchical representations of curvilinear structures. Two types of attention modules - spatial attention and channel attention - are utilized to enhance the inter-class discrimination and intra-class responsiveness, to further integrate local features with their global dependencies and normalization, adaptively. Furthermore, to facilitate the segmentation of curvilinear structures in medical images, we employ a 1x3 and a 3x1 convolutional kernel to capture boundary features. ...

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