基于移动激光雷达的输电线路实时识别技术

Minglei Li, Li Xu, Mingfan Li, Guoyuan Qu, Dazhou Wei, Wei Li
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引用次数: 0

摘要

摘要本文提出了一种通过光探测与测距(LiDAR)实时移动扫描获取输电线路三维点云的识别方法。由于激光雷达获取的单帧点云是稀疏的,该方法采用滑动空间窗口策略和卡尔曼滤波进行动态点云注册。然后,针对输电线路对象设计了一种利用均匀采样和局部特征聚合(LFA)的三维点云深度学习神经网络。该网络可处理大跨度物体和大量点云的问题。最后,通过快速欧氏聚类算法,从语义分割的三维点云自上而下的投影中提取出实例化的输电线路对象。实验证明,该方法在激光雷达移动扫描获得的输电线路三维点云数据集上实现了 94.7% 的分类准确率和 81.6% 的平均交集超过联合率,验证了其实现输电线路对象实时识别和距离测量的能力。
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Mobile LiDAR-based Real-time Identification of Transmission Lines
Abstract. This paper proposes a method for identifying 3D point cloud of transmission line acquired by light detection and ranging (LiDAR) real-time mobile scanning. Since the single frame of point cloud obtained by LiDAR is sparse, the method employs a sliding spatial window strategy with Kalman filtering for dynamic point cloud registration. Then, a 3D point cloud deep learning neural network that utilizes uniform sampling and local feature aggregation (LFA) is designed specifically for transmission line objects. The network handles the problem of long-span objects and a large amount of point cloud. Finally, the instantiated transmission line objects are extracted from the top-down projection of the semantically segmented 3D point cloud by fast Euclidean clustering algorithm. Experiments demonstrate that the method achieves a classification accuracy of 94.7% and a mean intersection over union of 81.6% on 3D point cloud datasets of transmission line obtained from LiDAR mobile scanning, validating its ability to achieve real-time identification and distance measurement of transmission line objects.
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