Accurate segmentation of nuclei in pathological images via sparse reconstruction and deep convolutional networks
Xipeng Pan(Beijing University of Posts and Telecommunications), Yongxian Fan(Guilin University of Electronic Technology), Lingqiao Li(Guilin University of Electronic Technology), Huihua Yang(Beijing University of Posts and Telecommunications), Zhenbing Liu(Guilin University of Electronic Technology), Lingling Zhao(Guilin University of Electronic Technology), Jinxin Yang(Beijing University of Posts and Telecommunications)
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