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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Connectivity-based convolutional neural network for classifying point clouds
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Connectivity-based convolutional neural network for classifying point clouds

机译:基于连接点云的连接卷积神经网络

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摘要

The acquisition of point clouds with a 3D scanner often yields large-scale, irregular, and unordered raw data, which hinders the classification of objects from these data. Some studies have introduced a method of applying the point clouds to convolutional neural networks (CNNs). This is achieved after preprocessing the volume metrics or multi-view images. However, this method has a limited resolution and a low classification accuracy in comparison to heavy computation in object classification. In this paper, DenX-Conv is proposed to improve the accuracy of object classification while securing the connectivity of points from the raw point cloud. DenX-Conv can extract effective local geometric features by finding the neighbor connectivity based on the geometric topology information of the points. In addition, stable feature learning is made possible by applying a densely connected network to PointCNN's chi-Conv. Application of DenX-Conv to the ModelNet40 dataset resulted in a classification accuracy of 92.5%. (C) 2020 Elsevier Ltd. All rights reserved.
机译:用3D扫描仪获取点云通常会产生大规模、不规则和无序的原始数据,这阻碍了从这些数据中对对象进行分类。一些研究介绍了一种将点云应用于卷积神经网络(CNN)的方法。这是在预处理体积度量或多视图图像后实现的。然而,与目标分类中的大量计算相比,该方法具有有限的分辨率和较低的分类精度。本文提出了DenX-Conv来提高目标分类的准确性,同时保证原始点云中点的连通性。DenX-Conv基于点的几何拓扑信息,通过寻找邻域连通性来提取有效的局部几何特征。此外,通过将密集连接的网络应用于PointCNN的chi-Conv,可以实现稳定的特征学习。将DenX Conv应用于ModelNet40数据集,分类准确率达到92.5%。(C) 2020爱思唯尔有限公司版权所有。

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