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SIMULATION-BASED DATA AUGMENTATION USING PHYSICAL PRIORS FOR NOISE FILTERING DEEP NEURAL NETWORK

机译:基于仿真的数据增强利用噪声过滤深神经网络的物理前沿

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LiDAR (Light Detection and Ranging) mounted with static and mobile vehicles has been rapidly adopted as a primary sensor for mapping natural and built environments for a range of civil and military applications. Recently, technology advancement in electro-optical engineering enables acquiring laser returns at high pulse repetition frequency (PRF) from 100Hz to 2MHz for airborne LiDAR, which leads to an increase in the density of 3D point cloud significantly. Traditional systems with lower PRF had a single pulse-in-air zone (PIA) big enough to avoid a mismatch between pulse pair at the receiver. Modern multiple pulses-in-air (MPIA) technology ensures multiple windows of operational ranges for single flight line and no blind-zones; downside of the technology is projection of atmospheric returns closer to same PIA zone of neighbouring ground points and more likely to be overlapping with objects of interest. These characteristics of noise compromise the quality of the scene and encourage usage of noise filtering neural network as existing filters are not effective. A noise filtering deep neural network requires a considerable volume of the diverse annotated dataset, which is expensive. We developed simulation for data augmentation based on physical priors and Gaussian generative function. Our study compares deep learning networks for noise filtering and shows performance gain on 3D U-Net. Then, we evaluate 3D U-Net for simulation-based data augmentation, which shows an increase in precision and F1-score. We also provide an analysis of the underline spatial distribution of points and their impact on data augmentation, and noise filtering.
机译:安装有静电和移动车辆的LIDAR(光检测和测距)已被迅速采用作为用于一系列民用和军事应用的自然和建筑环境的主要传感器。最近,电光工程中的技术进步使得能够从100Hz到2MHz的高脉冲重复频率(PRF)获得激光返回,用于机载LIDAR,这导致3D点云的密度显着增加。具有较低PRF的传统系统具有足够大的单个脉冲内部区域(PIA),以避免接收器处的脉冲对之间的不匹配。现代多脉冲空中(MPIA)技术确保单个飞行线的多个操作范围,没有盲区;该技术的缺点是对邻近地点相同的PIA区的大气回报的投影,更有可能与感兴趣的物体重叠。由于现有滤波器无效,这些噪声的质量损害了场景的质量并鼓励使用噪声过滤神经网络。深度神经网络的噪声滤波需要相当容量的多样化注释数据集,这是昂贵的。我们基于物理前驱和高斯生成功能开发了用于数据增强的仿真。我们的研究比较了噪声过滤的深度学习网络,并显示了3D U-Net上的性能增益。然后,我们评估基于模拟的数据增强的3D U-Net,其显示精度和F1分数的增加。我们还提供了对点的下划线空间分布及其对数据增强的影响以及噪声过滤的分析。

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