A 3D sphere representation-based center-points matching detection network (SCPM-Net) that is anchor-free and automatically predicts the position, radius, and offset of nodules without manual design of nodule/anchor parameters is proposed.
Authors
Dimitris N. Metaxas
3 papers
Jieneng Chen
5 papers
Guotai Wang
6 papers
Shaoting Zhang
7 papers
Xiangde Luo
4 papers
Tao Song
3 papers
Yinan Chen
2 papers
Kang Li
1 papers
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