FCPNet: A method for rescuing feature information loss in scaling change for urban 3D Point cloud classification

Yue Jiang,Guoqing Zhou

IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing(2024)

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摘要
The loss of feature information during scale propagation in deep learning method usually causes a big misclassification rate for many complex urban scenes. For this reason, this paper presents a new deep learning method, called “Feature combination and promotion network-FCPNet”. This method consists of an End-to-end feature learning layer for obtaining multi-scale depth features of point clouds, an External feature combination module for obtaining more fine-grained point cloud features, and a Muti-headed separable self-attention module for learning connections between features to obtain more globally informative features. When compared with PointNet++, the proposed FCPNet improved OA, MIOU, F1-score and kappa in NPM3D dataset by 1.75%, 17.02%, 2.13% and 0.0263, respectively. When compared with KpConv, the proposed FCPNet improved OA, mIOU, F1-score, and kappa in NPM3D dataset by 0.36%, 12.11%, 0.77%, and 0.0085, respectively. Especially, the proposed FCPNet is able to classify the objects with fewer point cloud data, such as pedestrians and cars, whose OA can reach 88.04% and 96.42%, respectively. These experimental results demonstrated the proposed FCPNet has rescued much lost information happened in the traditional PointNet++. In addition, the adaptability to point cloud density variations for the proposed method is verified as well. The results demonstrated that when the total density of point cloud data decreases from 731.3 pcs/m 2 to 52.2 pcs/m 2 , the OA of classification with the proposed FCPNet method only decreases by 3.07%. This means that the proposed FCPNet method is capable of being adaptive to the point cloud density changes.
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关键词
Three-dimensional (3D),Point cloud data,Classification,Deep learning,Information loss,Separable self-attention
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