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AUTOMATED SEMANTIC SEGMENTATION OF NON-EUCLIDEAN 3D DATA SETS USING DEEP LEARNING

机译:使用深度学习的非欧几里德3D数据集自动化语义分割

摘要

The invention relates to a computer-implemented method for semantic segmentation of a point cloud comprising: receiving a point cloud, the point cloud including points representing a vector in a 3D space, the points representing a predetermined object, preferably part of a dento-maxillofacial structure, the dento-maxillofacial structure including a dentition comprising teeth; determining one or more subsets of the point cloud using a non-uniform resampling algorithm, each of the one or more subsets including a first number of points arranged within a predetermined spatial distance of a selected point of the point cloud and a second number of points arranged at spatial distances larger than the predetermined spatial distance, the first number of point representing one or more fine features of the object around the selected point and the second number of points representing one or more global features of the object; providing each of one or more subsets of points to the input of a deep neural network (DNN), the deep neural network being trained to semantically segment points of each of the one or more subsets that is provided to the input of the DNN according to a plurality of classes associated with the object; and, for each point of the subset that is provided to the input of the DNN, receiving at the output of the DNN a multi-element vector, wherein each element of the vector represents a probability that the point belongs to one of the plurality of classes of the object.
机译:本发明涉及一种用于点云的计算机实现方法,包括:接收点云,该点云包括表示3D空间中的向量的点,表示预定物体的点,优选地是心脏颌面部分的一部分结构,包括包括牙齿的牙齿的牙齿颌面结构;使用非统一重采样算法确定点云的一个或多个子集,每个子​​集中的每一个包括在点云的所选点的预定空间距离和第二个点的预定空间距离内排列在预定的空间距离内布置在大于预定空间距离的空间距离处,第一数量的点表示所选点周围的对象的一个​​或多个细节,以及表示对象的一个​​或多个全局特征的第二个点;向深度神经网络(DNN)的输入提供每个指向的每个子集,深神经网络被训练,所述深神经网络被训练到一个或多个子集的每个子集的语义段点,所述子集根据DNN的输入提供给DNN的输入。与对象相关联的多个类;并且,对于提供给DNN的输入的子集的每个点,在DNN A多元素向量的输出处接收,其中载体的每个元素表示该点属于多个中的概率对象的类。

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