Three-dimensional point cloud semantic segmentation method based on local and non-local feature aggregation

The invention discloses a three-dimensional point cloud semantic segmentation method based on local and non-local feature aggregation. The method aims to solve the problems that an existing feature learning process is sensitive to noise, only local information interaction of adjacent areas is consid...

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Hauptverfasser: JIA HAITAO, CHANG LE, SONG YIYUN, LENG GENG, LUO XIN, WEI ZUQI, XU WENBO, REGAZA ADUGNA TESFAYE
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creator JIA HAITAO
CHANG LE
SONG YIYUN
LENG GENG
LUO XIN
WEI ZUQI
XU WENBO
REGAZA ADUGNA TESFAYE
description The invention discloses a three-dimensional point cloud semantic segmentation method based on local and non-local feature aggregation. The method aims to solve the problems that an existing feature learning process is sensitive to noise, only local information interaction of adjacent areas is considered, then global context is obtained through a hierarchical structure, feature learning from bottom to top is generally caused, accordingly, extracted feature information is affected by outliers, and feature redundancy exists. The invention provides a weighted summation method based on local information and non-local feature information. According to the method, a 3D point cloud is used as input, and relative coordinates are used as local features in a point local unit; in the non-local feature extraction module of the points, sampling points are used as query points, the relevancy between the sampling points and the whole point cloud in the layer is calculated through an attention mechanism, then MLP is carried o
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COMPUTING
COUNTING
PHYSICS
title Three-dimensional point cloud semantic segmentation method based on local and non-local feature aggregation
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