Albert Matveev, Alexey Artemov, Ruslan Rakhimov, Gleb Bobrovskikh, Daniele Panozzo...
TL;DR提出了Deep Estimators of Features(DEFs)框架,用于通过标量场回归来准确地预测采样的3D形状的尖锐几何特征,并使用该方法来从点云数据中恢复尖锐特征线的显式表示。
Abstract
Sharp feature lines carry essential information about human-made objects, enabling compact 3D shape representations, high-quality surface reconstruction, and are a signal source for mesh processing. While extracting high-quality lines from noisy and undersampled data is challenging for traditional methods, deep learning-powered algorithms can leverage global