GeoNet: Deep Geodesic Networks for Point Cloud Analysis
Surface-based geodesic topology provides strong cues for object semantic analysis and geometric modeling. However, such connectivity information is lost in point clouds. Thus we introduce GeoNet, the first deep learning architecture trained to model the intrinsic structure of surfaces represented as...
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Zusammenfassung: | Surface-based geodesic topology provides strong cues for object semantic
analysis and geometric modeling. However, such connectivity information is lost
in point clouds. Thus we introduce GeoNet, the first deep learning architecture
trained to model the intrinsic structure of surfaces represented as point
clouds. To demonstrate the applicability of learned geodesic-aware
representations, we propose fusion schemes which use GeoNet in conjunction with
other baseline or backbone networks, such as PU-Net and PointNet++, for
down-stream point cloud analysis. Our method improves the state-of-the-art on
multiple representative tasks that can benefit from understandings of the
underlying surface topology, including point upsampling, normal estimation,
mesh reconstruction and non-rigid shape classification. |
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DOI: | 10.48550/arxiv.1901.00680 |