点云
人工神经网络
计算机科学
人工智能
激光雷达
激光扫描
计算机视觉
航程(航空)
交叉熵
激光器
最大熵原理
工程类
光学
物理
航空航天工程
作者
Xiaobin Xu,Minghui Zhao,Jian Yang,Yi-yang Xiong,Fenglin Pang,Zhiying Tan,Minzhou Luo
标识
DOI:10.1016/j.dt.2021.06.013
摘要
A 3D laser scanning strategy based on cascaded deep neural network is proposed for the scanning system converted from 2D Lidar with a pitching motion device. The strategy is aimed at moving target detection and monitoring. Combining the device characteristics, the strategy first proposes a cascaded deep neural network, which inputs 2D point cloud, color image and pitching angle. The outputs are target distance and speed classification. And the cross-entropy loss function of network is modified by using focal loss and uniform distribution to improve the recognition accuracy. Then a pitching range and speed model are proposed to determine pitching motion parameters. Finally, the adaptive scanning is realized by integral separate speed PID. The experimental results show that the accuracies of the improved network target detection box, distance and speed classification are 90.17%, 96.87% and 96.97%, respectively. The average speed error of the improved PID is 0.4239°/s, and the average strategy execution time is 0.1521 s. The range and speed model can effectively reduce the collection of useless information and the deformation of the target point cloud. Conclusively, the experimental of overall scanning strategy show that it can improve target point cloud integrity and density while ensuring the capture of target.
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