点云
计算机科学
分割
深度学习
建筑
人工智能
点(几何)
乘法函数
缩放比例
模式识别(心理学)
几何学
地理
数学
数学分析
考古
作者
Roman Klokov,Victor Lempitsky
出处
期刊:International Conference on Computer Vision
日期:2017-10-01
卷期号:: 863-872
被引量:1039
摘要
We present a new deep learning architecture (called Kdnetwork) that is designed for 3D model recognition tasks and works with unstructured point clouds. The new architecture performs multiplicative transformations and shares parameters of these transformations according to the subdivisions of the point clouds imposed onto them by kdtrees. Unlike the currently dominant convolutional architectures that usually require rasterization on uniform twodimensional or three-dimensional grids, Kd-networks do not rely on such grids in any way and therefore avoid poor scaling behavior. In a series of experiments with popular shape recognition benchmarks, Kd-networks demonstrate competitive performance in a number of shape recognition tasks such as shape classification, shape retrieval and shape part segmentation.
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