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Dense three-dimensional correspondence estimation with multi-level metric learning and hierarchical matching

机译:具有多级度量学习和层次匹配的密集三维对应估计

摘要

A method for estimating dense 3D geometric correspondences between two input point clouds by employing a 3D convolutional neural network (CNN) architecture is presented. The method includes, during a training phase, transforming the two input point clouds into truncated distance function voxel grid representations, feeding the truncated distance function voxel grid representations into individual feature extraction layers with tied weights, extracting low-level features from a first feature extraction layer, extracting high-level features from a second feature extraction layer, normalizing the extracted low-level features and high-level features, and applying deep supervision of multiple contrastive losses and multiple hard negative mining modules at the first and second feature extraction layers. The method further includes, during a testing phase, employing the high-level features capturing high-level semantic information to obtain coarse matching locations, and refining the coarse matching locations with the low-level features to capture low-level geometric information for estimating precise matching locations.
机译:提出了一种通过采用3D卷积神经网络(CNN)体系结构估算两个输入点云之间的密集3D几何对应关系的方法。该方法包括,在训练阶段,将两个输入点云转换为截短的距离函数体素网格表示,将截短的距离函数体素网格表示馈入具有权重的各个特征提取层,从第一特征提取中提取低层特征层,从第二个特征提取层中提取高级特征,对提取的低层特征和高级特征进行归一化,并在第一和第二个特征提取层对多个对比损失和多个硬性负挖掘模块进行深度监控。该方法进一步包括,在测试阶段,采用捕获高级语义信息的高级特征来获得粗略的匹配位置,并利用低级特征来完善粗略的匹配位置以捕获低级几何信息以进行精确估计。匹配的位置。

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